CHARACTERISTICS AND BARRIERS
IMPACTING THE DIFFUSION OF E-EXTENSION AMONG
TEXAS COOPERATIVE EXTENSION COUNTY EXTENSION AGENTS
A Dissertation
by
AMY MARIE HARDER
Submitted to the Office of Graduate Studies of
Texas A&M University in partial fulfillment of the requirements for the degree of
DOCTOR OF PHILOSOPHY
August 2007
Major Subject: Agricultural Education
CHARACTERISTICS AND BARRIERS
IMPACTING THE DIFFUSION OF E-EXTENSION AMONG
TEXAS COOPERATIVE EXTENSION COUNTY EXTENSION AGENTS
A Dissertation
by
AMY MARIE HARDER
Submitted to the Office of Graduate Studies of Texas A&M University
in partial fulfillment of the requirements for the degree of
DOCTOR OF PHILOSOPHY
Approved by: Chair of Committee, Committee Members, Head of Department,
James R. Lindner Larry M. Dooley Tim H. Murphy Nicole L. P. Stedman Gary J. Wingenbach Christine Townsend
August 2007
Major Subject: Agricultural Education
iii
ABSTRACT
Characteristics and Barriers
Impacting the Diffusion of E-Extension among
Texas Cooperative Extension County Extension Agents. (August 2007)
Amy Marie Harder, B.S., Colorado State University;
M.Agr., Colorado State University
Chair of Advisory Committee: Dr. James R. Lindner
The overall purpose of this study was to understand the influence of selected
factors on the adoption of eXtension by Texas Cooperative Extension County Extension
agents. Specifically, the study looked at how the relationships between stage in the
innovation-decision process, characteristics of agents, characteristics of the innovation,
and barriers to adoption affect the diffusion of eXtension. A random sample of 237
agents was selected for participation in the study. A majority of agents reported they
were in the knowledge stage (52%); 31% had no knowledge of the innovation; 8% were
in the implementation stage; 3% were in the persuasion stage; 3% were in the decision
stage and 2% were in the confirmation stage.
Respondents had positive perceptions of relative advantage, compatibility,
complexity and trialability as those characteristics related to eXtension. They had the
most positive perceptions of complexity. They did not perceive eXtension to have a high
degree of observability.
iv
Agents perceived at least five barriers existed to the adoption of eXtension.
Reducing or eliminating these barriers, particularly the barrier related to concerns about
time, would be expected to positively affect the rate of adoption.
Agents’ perceptions of complexity and compatibility significantly differed by
primary agent role and gender, respectively. The differences may be attributable to
varying job experiences based upon role and gender.
Agents’ perceptions of a lack of eXtension incentives significantly differed by
education. Significant relationships existed between selected characteristics of eXtension
and potential barriers to the adoption of eXtension. Based on the findings, offering
monetary incentives may increase the rate of adoption, and decrease agents’ financial
concerns.
Significantly more respondents reported they were in the “no knowledge” stage
in the innovation-decision than would be expected to occur by chance.
Agents may have ignored repeated messages about eXtension because it was not
perceived as consistent with their attitudes and beliefs. This implication should be noted
by those hoping to increase the diffusion of eXtension.
On a broader level, these findings support expanding the model of the
innovation-decision process to include the “no knowledge” stage.
v
For my grandma, Dolores Gray.
I love you, I miss you, and I hope to make you proud of all that I do.
vi
ACKNOWLEDGEMENTS
My love and my gratitude go to my parents, Patrick and Linda Gray, for laying
the foundation for success in my life. They taught me to have good values and faith in
God. They took my sister and me out into the world to explore new places, try new
things, and make memories which would eventually shape the type of adults we would
become. Most of all, they have always believed I could accomplish whatever I set my
mind to, and they never let me settle for anything less than achieving my potential.
I want to thank my big sister, Shelley Good, for her love and support. Her stories
about her adventures as a first-year high school science teacher were often just what I
needed to hear when I became frustrated with my college students. I am grateful, too,
because Shelley brought my brother-in-law, Chuck, and my step-niece, Tara, into my
life.
I was fortunate to have a solid committee of faculty members who really cared
about seeing me succeed as a student: Drs. James Lindner, Gary Wingenbach, Tim
Murphy, Nicole Stedman and Larry Dooley. Dr. Lindner, my chair, has done so much
more than what was required to fulfill his academic obligation to me. He has been both
mentor and friend, and I will miss hearing his daily snippets of comedy and wisdom.
Dr. Wingenbach’s willingness to involve me in his USDA-ISE project led to
opportunities to present research across the country and I am particularly grateful for
that.
My love and thanks go to a special group of graduate students for their friendship
over the past two years. My office mate, Diana Mowen, provided hours of comic relief
vii
in the midst of insanity. To the rest of my friends, I will never forget: the time we spent
commiserating together on Wednesday nights; Sunday football feasts; our first AGSS
softball victory against the faculty team; and sacrificing body parts for soccer. Go Smart
ALECs!
Some graduate students have children they want to thank. I have dogs. Bubba
and Tonka have been my faithful companions throughout the entire writing process,
often lying by my feet as I worked on my dissertation for hours at a time. If it weren’t
for going on walks with them, there are days I don’t think I would have ever made it
outside. I will do everything I can to repay them with much love, hugs, and the biggest
rawhides money can buy.
Most of all, I cannot express enough gratitude to my husband, Bret Harder. He
gave up his life in Colorado so that I could attend graduate school at the university
where I thought I could learn the most. His love enabled me to achieve something
special. This has not always been an easy journey, but I believe it has only strengthened
us. I look forward to starting the next phase of our life together.
viii
TABLE OF CONTENTS
Page
ABSTRACT ............................................................................................................ iii
DEDICATION ........................................................................................................ v
ACKNOWLEDGEMENTS .................................................................................... vi
TABLE OF CONTENTS ........................................................................................ viii
LIST OF FIGURES................................................................................................. x
LIST OF TABLES .................................................................................................. xi
CHAPTER
I INTRODUCTION ................................................................................
History of Cooperative Extension................................................Current Extension System............................................................Statement of Problem...................................................................Purpose of Study ..........................................................................Research Objectives .....................................................................Theoretical Framework ................................................................Significance of Study ...................................................................Definition of Terms......................................................................Limitations of Study.....................................................................
1
126778
101011
II REVIEW OF LITERATURE...............................................................
Characteristics of an Innovation...................................................Barriers to Adoption.....................................................................Characteristics of Adopters ..........................................................Conceptual Framework ................................................................
12
13222528
III METHODOLOGY...............................................................................
Data Analysis ...............................................................................
30
37
ix
CHAPTER Page
IV FINDINGS ...........................................................................................
Response Rate .................................................................................Non-Response Error ........................................................................Objective One: Findings..................................................................Objective Two: Findings.................................................................Objective Three: Findings...............................................................Objective Four: Findings.................................................................Objective Five: Findings .................................................................Objective Six: Findings...................................................................Objective Seven: Findings ..............................................................Objective Eight: Findings................................................................Objective Nine: Findings ................................................................
42
4242464950566271808384
V CONCLUSION, IMPLICATIONS, AND RECOMMENDATIONS..
Summary of Study...........................................................................Summary of Purpose and Objectives ..............................................Summary of Methodology ..............................................................Conclusions, Implications, and Recommendations.........................Summary of Recommendations for Practice...................................Summary of Recommendations for Future Research .....................
87
87888990
115117
REFERENCES........................................................................................................ 121
APPENDIX A ......................................................................................................... 132
APPENDIX B ......................................................................................................... 138
APPENDIX C ......................................................................................................... 143
VITA ....................................................................................................................... 145
x
LIST OF FIGURES
FIGURE Page
1 Conceptual framework for the diffusion of eXtension.................................... 29
2 Distribution of respondents in the stages of the innovation-decision process .............................................................................................................
50
xi
LIST OF TABLES
TABLE Page
1 Sample Statements from Section B: Characteristics of eXtension................. 33
2 Sample Statements from Section C: Potential Barriers .................................. 34
3 Reliability Levels of Internal Scales............................................................... 36
4 Relationship Descriptors.................................................................................
41
5 Comparison of Early and Late Respondents’ Stage in Innovation-Decision Process.............................................................................................
43
6 Comparison of Early and Late Respondents’ Perceptions of eXtension........ 44
7 Comparison of Early and Late Respondents’ Perceptions of Potential Barriers ...........................................................................................................
45
8 Distribution of Respondents by Primary Agent Role..................................... 46
9 Distribution of Respondents by County Category.......................................... 47
10 Distribution of Respondents by Educational Attainment ............................... 48
11 Distribution of Respondents by Age Range ................................................... 48
12 Distribution of Respondents by Gender ......................................................... 49
13 Distribution of Respondents by Innovation-Decision Stage .......................... 49
14 Respondents’ Perceptions of eXtension by Construct.................................... 51
15 Respondents’ Perceptions of the Relative Advantage of eXtension by Individual Response Item ...............................................................................
52
16 Respondents’ Perceptions of the Compatibility of eXtension by Individual Response Item ...............................................................................
53
17 Respondents’ Perceptions of the Observability of eXtension by Individual Response Item ...............................................................................
54
xii
TABLE Page 18 Respondents’ Perceptions of the Complexity of eXtension by Individual
Response Item.................................................................................................
55
19 Respondents’ Perceptions of the Trialability of eXtension by Individual Response Item.................................................................................................
56
20 Respondents’ Perceptions of Potential Barriers to eXtension by Construct ..
57
21 Respondents’ Perceptions of Concerns about Time as a Potential Barrier to eXtension by Individual Response Item.....................................................
58
22 Respondents’ Perceptions of Concerns about Incentives as a Potential Barrier to eXtension by Individual Response Item ........................................
59
23 Respondents’ Perceptions of Financial Concerns as a Potential Barrier to eXtension by Individual Response Item.........................................................
60
24 Respondents’ Perceptions of Planning Issues as a Potential Barrier to eXtension by Individual Response Item.........................................................
61
25 Respondents’ Perceptions of Technology Concerns as a Potential Barrier to eXtension by Individual Response Item.....................................................
62
26 Analysis of Variance for Perceptions of eXtension by Primary Agent Role.................................................................................................................
64
27 Analysis of Variance for Perceptions of eXtension by County Category ...... 66
28 Comparison of Respondents’ Perceptions of Extension by Education .......... 68
29 Analysis of Variance for Perceptions of eXtension by Age........................... 69
30 Comparison of Respondents’ Perceptions of eXtension by Gender............... 71
31 Analysis of Variance for Perceptions of Potential Barriers by Primary Agent Role......................................................................................................
73
32 Analysis of Variance for Perceptions of Potential Barriers by County Category..........................................................................................................
75
33 Comparison of Respondents’ Perceptions of Potential Barriers by Education ........................................................................................................
77
xiii
TABLE
Page
34 Analysis of Variance for Perceptions of Potential Barriers by Age ............... 78
35 Comparison of Respondents’ Perceptions of Potential Barriers by Gender... 79
36 Correlations between Perceptions of Potential Barriers to eXtension and Relative Advantage.........................................................................................
80
37 Correlations between Perceptions of Potential Barriers to eXtension and Compatibility ..................................................................................................
81
38 Correlations between Perceptions of Potential Barriers to eXtension and Observability ..................................................................................................
82
39 Correlations between Perceptions of Potential Barriers to eXtension and Complexity .....................................................................................................
82
40 Correlations between Perceptions of Potential Barriers to eXtension and Trialability ......................................................................................................
83
41 Expected and Observed Frequencies for Respondents’ Stages in the Innovation-Decision Process ..........................................................................
84
42 Statistical Significance of the Discriminant Function .................................... 85
43 Summary Data for Discriminant Function One.............................................. 86
1
CHAPTER I
INTRODUCTION
Bringing knowledge from the university to the people—this is the mission of
Cooperative Extension. Since its inception in 1914, Extension has focused on educating
the American public through outreach programs. In a single year, one Extension
program – 4-H - served almost seven million people (USDA, 2003). Yet, there is
concern that the traditional model which made Extension so successful in the 20th
century may not sustain Extension in the 21st century (Bull, Cote, Warner & McKinnie,
2004; Crosby et al., 2002; Rasmussen, 1989; Williamson & Smoak, 2005). A review of
the history of Cooperative Extension, the current extension system, statement of
problem, research objectives, and the significance of the study are presented in this
chapter.
History of Cooperative Extension
Cooperative Extension is the result of a need for a service which could
disseminate information about the best agricultural and mechanical practices to the
farmers and ranchers. The first legislation to address this need was the Morrill Land-
Grant College Act of 1862. As the name suggests, the Morrill Act established the first
land-grant colleges in the country for the purposes of teaching agriculture and
_____________ This dissertation follows the style of the Journal of Agricultural Education.
2
mechanics. In 1887, the Hatch Act created agricultural experiment stations in each state
to test new farming and ranching practices. Three years later, a second Morrill Act was
passed. It mandated annual appropriations to each land-grant institution and led to the
creation of the first land-grant colleges for African-Americans.
After these Acts were passed, momentum towards to the creation of Cooperative
Extension began to build. Agriculturalists established farmers’ institutes across the
country, trains filled with lecturers and educational displays traversed the fields, and
boys’ and girls’ clubs teaching practical skills such as growing corn and canning were
quickly gaining in popularity. The concepts of the county agent and extension had been
introduced in many areas with positive results. Out of these events emerged the most
significant piece of legislation for Cooperative Extension, the Smith-Lever Act
(Rasmussen, 1989).
In 1914, the Smith-Lever Act was passed to create the Cooperative Extension
Service. Extension became a part of the land-grant university framework, joining the
land-grant institutions and agricultural experiment stations. The extension agent’s role
was to serve as a translator, interpreting land-grant research for the local clientele who
needed it.
Current Extension System
Today’s Extension service has a strong resemblance to its historical roots
(Rasmussen, 1989). The unique tri-level administrative system remains a defining
feature of Extension. Agents still provide the link between the land-grant universities
3
and the local clientele. Most notably, Extension continues to maintain an extensive
network of contacts throughout nearly every county and parish in the United States, with
over 3,100 offices in total.
Extension’s programming has evolved since its inauguration (Rasmussen, 1989;
Seevers, Graham, Gamon & Conklin, 1997). Extension agents are no longer limited to
traditional subjects such as agriculture, 4-H, and home economics (modernly referred to
as family and consumer sciences), but they have diversified into other areas, like
nutrition education, natural resources and horticulture. In the traditional areas, such as
agriculture, programming has expanded to include contemporary issues such as
contagious livestock diseases (Ather & Green, 2005). Other agents have been recruited
to participate in preparedness trainings for such potential disasters as bio-terrorism,
wildfire and hurricanes (Wiens, Evans, Tsao, & Liss, 2004).
The ability to communicate with people has traditionally been considered the
hallmark of Extension (Simeral, 2001). County personnel develop personal relationships
with the clientele they serve, working with advisory councils, local commissioners and
families on an everyday basis. Agents devote significant amounts of time to their work.
This traditional method of doing business adds a recognizable value to Extension and its
programs (Simeral, 2001).
According to Accenture’s (2003) business assessment of Cooperative Extension,
“cultural and technological changes are quickly outpacing the traditional Extension
delivery model” (p. 5). Extension cannot afford to be outpaced as it moves forward into
the 21st century. As is, Smith-Lever funding has remained flat over the last decade. This
4
has caused 80% of extension programs to reduce personnel, while 60% have responded
by cutting programs, thus creating unmet needs in many communities (Payne, 2004). A
Cooperative State Research, Education, and Extension Service (CSREES) white paper
noted, “The capacity of the Extension System to change is swiftly eroding through
decreasing human resources and decreasing financial capital” (Crosby et al., 2002,
Problem/Need section, ¶ 2).
State-level funding has also decreased. Even states without funding cuts are in
precarious budgetary positions (McDowell, 2005). Increasingly, state Extension
programs are turning to grants and private source funding for their budgetary needs.
Partners who used to work together have been placed in direct competition with each
other, threatening the collaborative nature of the system (Payne, 2004). This unstable
financial situation highlights the need for Extension to move beyond the status quo and
embrace innovative methods of educational outreach.
Doing business via the Internet is both realistic and potentially essential for
success in the 21st century. As of April 2006, 73% of American households with
telephone access reported (at least) occasional use of the Internet (Madden, 2006). This
number is expected to continue growing into the foreseeable future. By taking advantage
of this trend and using the Internet as an educational tool, increases in the overall
functionality of the entire Cooperative Extension system can be recognized (Tennessen,
PonTell, Romine & Motheral, 1997).
5
A major flaw of Extension’s current Internet efforts is their lack of visibility
(Accenture, 2003; Palmer, 2006). This is a recurring problem for the organization.
Jenkins (1993) said of Extension:
The problem isn’t they have an unfavorable image; they don’t. The
problem is they have no image at all (or only a very weak and fuzzy one)
with certain vitally important groups that will have a significant impact on
their future (¶ 1).
Weerts (2005) echoed this sentiment: “The need for public understanding and awareness
of the value of university Extension and outreach is at an all-time high” (¶ 1). As an
organization dependent upon public dollars, the lack of Extension’s organizational and
Internet visibility is a serious concern.
A new delivery strategy, known as eXtension, is currently being developed to
provide Extension with a critically needed information technology solution. The vision
for eXtension was initially developed by an Extension Committee on Organization and
Policy (ECOP) task force in 2001. In 2002, an ECOP report entitled The Extension
System: A Vision for the 21st Century called for Extension personnel to move
aggressively into the world of information technology. Since that time, CSREES and
many of the 1862 and 1890 land-grant institutions have joined together to provide the
bulk of eXtension’s four million dollar annual budget. eXtension is administrated by a
single director and a small staff, with oversight from ECOP, a governing committee and
multiple advisory councils.
6
The nationwide, online network of eXtension will be available as a website 24
hours a day, seven days a week, in a wide variety of formats. Agents and clientele will
be able to access eXtension from any internet-ready device and can personalize the
program to reflect their needs. Proposed features include frequently asked questions,
forums, online courses, certification programs, live chats and diagnostics. Content will
be provided by teams of Extension experts, called Communities of Practice, from around
the country. Anticipated benefits include increased economic efficiency of the current
Extension model by reducing duplication of efforts, increased profits, increased
visibility, increased immediacy of information and increased customer satisfaction
(Accenture, 2003). In short, eXtension could be the key to increasing the relevance of
Extension for future generations of clientele, while the failure to adopt some form of e-
learning could be a dangerous proposition (Williamson & Smoak, 2005).
Statement of Problem
Agent adoption is critical to the success of eXtension (Accenture, 2003).
However, the difficulty in institutionalizing organizational change at the agent level is no
secret (Washington & Fowler, 2005). It is unlikely that eXtension will differ in this
regard. Actively participating in eXtension will require agents to incorporate new
delivery strategies into their own work. eXtension also affects the level of independence
most agents are accustomed to by focusing on nationally developed, rather than locally
developed, educational resources. As such, agents may fail to adopt eXtension based
upon their perceptions of it.
7
There are a myriad of consequences for Cooperative Extension if eXtension fails
and no other alternatives are pursued. Extension would be no closer to meeting the needs
of an increasingly online audience. Its organizational visibility and Internet presence
would remain low. Cooperative Extension would need to think of an alternate solution to
raise funds to offset flat Smith-Lever funding. Extension would need to recoup the
millions of dollars that have already been invested in eXtension. The failure of
eXtension might even cause state-based Extension programs to withdraw from any
future national efforts. If Cooperative Extension could not overcome these obstacles,
then Extension’s ability to serve as a relevant educational outreach program would be in
jeopardy.
Purpose of Study
The purpose of this study is to understand the influence of selected factors on the
adoption of eXtension by Texas Cooperative Extension county extension agents.
Research Objectives
1. Describe selected personal characteristics of Texas Cooperative Extension county
extension agents.
2. Determine agents’ stage in the innovation-decision process, based upon Li’s (2004)
adaptation of Rogers’ (2003) stages in the innovation-decision process (no
knowledge, knowledge, persuasion, decision, implementation, and confirmation).
8
3. Determine agents’ perceptions of eXtension based upon Rogers’ (2003)
characteristics of an innovation (relative advantage, compatibility, observability,
complexity, and trialability).
4. Determine agents’ perceptions of potential barriers (concerns about time, concerns
about incentives, financial concerns, planning issues, and technology concerns) to
the adoption of eXtension.
5. Determine if differences exist between agents’ perceptions of eXtension based upon
selected personal characteristics.
6. Determine if differences exist between agents’ perceptions of potential barriers to the
adoption of eXtension based upon selected personal characteristics.
7. Describe relationships between agents’ perceptions of eXtension based upon Rogers’
(2003) characteristics of an innovation and their perceptions of potential barriers to
the adoption of eXtension.
8. Determine the appropriateness of including “no knowledge” as a stage in the
innovation-decision process.
9. Predict stage in the innovation-decision process based upon agents’ perceptions of
the characteristics of eXtension, perceptions of the barriers to the diffusion of
eXtension, and selected personal characteristics.
Theoretical Framework
The theoretical framework for this research is based upon Rogers’ (2003) theory
of the diffusion of innovations. Rogers’ theory states innovations diffuse through a social
9
system over time. The rate of diffusion for an innovation is related to how potential
adopters perceive the innovation, and the characteristics of potential adopters.
There are five characteristics which influence how rapidly an innovation is
diffused into a social system: relative advantage, compatibility, complexity,
observability and trialability (Rogers, 2003). Of these five, relative advantage and
compatibility are considered to have the most influence on the rate of adoption (Rogers,
2003). Innovations that are perceived by individuals to have low complexity, with high
relative advantage, compatibility, observability, and trialability, diffuse most rapidly.
Certain factors, often called barriers, can negatively affect any of the perceived
characteristics of an innovation and the speed with which it is diffused.
Adopters can be categorized into five categories based upon how quickly they
implement an innovation: innovator, early adopter, early majority, late majority and
laggard (Rogers, 2003). Innovators are the first individuals to move through the
innovation-decision process; laggards are the last. The categorization of an individual as
a specific type of adopter is influenced by the speed with which the individual moves
through the innovation-decision process. Rogers (2003) included five stages in the
innovation-decision process: (a) knowledge, (b) persuasion, (c) decision, (d)
implementation, and (e) confirmation. Li (2004) proposed a sixth stage (no knowledge)
to include individuals who had not yet heard of an innovation.
Attributes such as international experience, high social status, solid finances, and
high levels of education are associated with innovators and early adopters. The slower
rates of adoption exhibited by the late majority and laggards are typically linked with
10
less education, less involvement in formal organizations, and less exposure to mass
media. Understanding the characteristics of adopters can help to explain the diffusion of
an innovation more clearly (Rogers, 2003).
Significance of Study
The findings of this study may have practical and academic implications. It is the
first known study to examine agents’ perceptions of eXtension, potential barriers to
eXtension, stage in the innovation-decision process, and adopter characteristics. This
study may provide empirical evidence that eXtension administration, individual land-
grant institutions, and local agents can use to make decisions about the adoption and
diffusion of eXtension. Extension agents will be provided with the opportunity to voice
their opinions and possible concerns about eXtension in a constructive manner. Through
the process of participating in this study, agents’ awareness of eXtension may be
increased. Finally, this study may contribute to the knowledge base for the diffusion of
innovations theory.
Definition of Terms
Compatibility: “the degree to which an innovation is perceived as better than the
idea it supersedes” (Rogers, 2003, p. 15)
Complexity: “the degree to which an innovation is perceived as difficult to
understand and use” (Rogers, 2003, p. 16)
CSREES: Cooperative State Research, Extension, and Education Service
11
ECOP: Extension Committee on Organization and Policy
Extension Agents: individuals employed to serve the citizens of a county, district
or parish in an Extension role; also known as educators in some areas
eXtension: a nationwide online network of research-based information resources
available to the public and supported by CSREES and partnering land-grant institutions
(Accenture, 2003)
Innovation: “an idea, practice, or object that is perceived as new by an individual
or other unit of adoption” (Rogers, 2003, p. 12)
Observability: “the degree to which the results of an innovation are visible to
others” (Rogers, 2003, p. 16)
Relative advantage: “the degree to which an innovation is perceived as better
than the idea is supersedes” (Rogers, 2003, p. 15)
Trialability: “the degree to which an innovation may be experimented with on a
limited basis” (Rogers, 2003, p. 16)
Limitations of Study
This study focuses on an emerging innovation; therefore, it is possible the
participants are still developing their perceptions of the characteristics and barriers of
eXtension. However, the data will provide an important baseline for measuring the long-
term diffusion of eXtension. In addition, the target population is limited to Texas
Cooperative Extension county extension agents so the results may not be generalizable
to extension agents in other states.
12
CHAPTER II
REVIEW OF LITERATURE
This research focused on eXtension, which is an emerging innovation. No
published studies about eXtension were found during the review of the literature. Studies
of the diffusion of web-based education in higher education and studies of the diffusion
of technologies related to eXtension amongst Extension agents were reviewed for
findings germane to the adoption and diffusion of eXtension. The literature is presented
in three primary areas: (a) characteristics of innovations, (b) barriers to innovations, and
(c) characteristics of adopters.
The idea of diffusion was first broadly introduced to the Extension profession in
1963 by Everett M. Rogers. Rogers (1963) wrote a two article series appearing in the
inaugural and second issues of the Journal of Cooperative Extension (now known as the
Journal of Extension), detailing the appropriateness of the diffusion theory for Extension
workers and providing an overview of the relevant literature.
In his first article, Rogers (1963) stated: “All Extension workers are change
agents—professional persons who attempt to influence adoption decisions in a direction
they feel is desirable” (p. 17). He identified four areas of diffusion as significant to
Extension: (a) the adoption process, (b) the rate of adoption of innovations, (c) adopter
categories, and (d) opinion leadership (Rogers). This study focused on the rate of
adoption of innovations and adopter categories in an effort to understand the factors
affecting the diffusion of eXtension.
13
Characteristics of an Innovation
According to Rogers (1963): “New ideas and potential adopters have identifiable
characteristics which appear to affect the diffusion of innovations” (p. 69). Rogers
(2003) defined an innovation as “an idea, practice, or object that is perceived as new by
an individual or other unit of adoption” (p. 12). Innovations are not adopted immediately
or uniformly by individuals. Instead, each innovation has its own rate of adoption, which
is “the relative speed with which an innovation is adopted by members of a social
system” (Rogers, 2003, p. 221). The rate of adoption can be affected by a number of
different factors, but the greatest amount of variance can be attributed to five attributes
(Rogers, 1995). These are relative advantage, compatibility, complexity, observability,
and trialability.
Relative advantage is “the degree to which an innovation is perceived as better
than the idea it supersedes” (Rogers, 2003, p. 15). An innovation may be perceived as
advantageous for a number of reasons. For example, fuel efficient cars sell better than
large trucks when gas prices are high, because of the perceived cost savings. However,
economic profitability is only one of the subdimensions of relative advantage that
Rogers identified. Immediacy of reward, social prestige, low initial cost, a decrease in
discomfort and a saving of time and effort are other subdimensions positively affecting
the relative advantage of an innovation. When adopters perceive an innovation to have a
high degree of relative advantage, it is much more likely the innovation will have a rapid
rate of adoption.
14
Compatibility is “the degree to which an innovation is perceived as consistent
with the existing values, past experiences, and needs of potential adopters” (Rogers,
2003, p. 240). Some innovations, despite clear benefits for adopters, fail to diffuse due to
clashes with cultural norms. Other innovations are misused, because individuals confuse
the new idea with an old one. Finally, an innovation which appears to fulfill a need for
an individual will be more attractive than one that does not. As with relative advantage, a
high degree of perceived compatibility is associated with a more rapid rate of adoption.
Trialability is “the degree to which an innovation may be experimented with on a
limited basis” (Rogers, 2003, p. 16). Previously, Rogers referred to this as divisibility
(Rogers, 1963), but both terms address the concept of allowing a potential adopter to
“test-drive” an innovation. In fact, test drives are a classic example of car dealers
attempting to increase the trialability of their product, to help convince individuals to
buy. Some innovations are more inherently divisible, and therefore more trialable, than
others. These innovations will likely diffuse faster than those that are non-divisible.
Rogers suggested trialability is valued more highly by the first individuals considering
adoption than those who adopt later, because they do not have the benefit of observing
other adopters. The experiences of near peers can substitute for personal experience if
necessary.
Observability is another key characteristic associated with the rate of adoption of
an innovation. Observability is “the degree to which the results of an innovation are
visible to others” (Rogers, 2003, p. 16). As mentioned previously, individuals’ decisions
to adopt are influenced by their observations of others who have adopted an innovation.
15
Individuals are more likely to adopt an innovation when they can see other people have
adopted it first. Observability is positively associated with rate of adoption.
Of the five characteristics of an innovation, complexity is the only one negatively
associated with rate of adoption. Complexity is “the degree to which an innovation is
perceived as difficult to understand and use” (Rogers, 2003, p. 16). Individuals may be
discouraged from adopting innovations which are perceived to be too complex.
Perceptions of complexity can lead an individual to believe the costs of adoption will
exceed the anticipated benefits.
There is an abundance of literature regarding the relative advantage of web-based
distance education for students. However, there has been less focus on the perceived
benefits to faculty. Murphy and Terry (1998) sought to achieve consensus in the field of
agricultural education regarding the usage of electronic technologies. Specifically, the
researchers asked the panel of experts on the Delphi panel to identify the positive effects
and obstacles related to the adoption of electronic technologies in agricultural education
(Murphy & Terry). The panel identified 21 ways in which technology would improve
instruction. The statements were clustered by the researchers to form four broad areas,
three of which were beneficial to faculty. Electronic technologies were perceived to
improve informational resources for faculty and to increase the effectiveness of
instructional materials. Increased convenience for delivering information via electronic
technologies was the third benefit. Murphy and Terry concluded electronic technologies
would lead to improvements in how agricultural education is taught.
16
Convenience was also a recurring theme associated with the use of online
instruction for faculty at Mississippi State University (Gamill & Newman, 2005).
Factors perceived to increase convenience included the reduction of time spent grading
and disseminating information, ability to be constantly in contact with students,
flexibility, and control of time. Respondents also mentioned potential cost savings to
their department, resulting from a decreased dependence on paper and copiers. Despite
these findings, faculty remained hesitant about adopting online instruction. A comment
from one faculty member described the challenge of promoting the relative advantages
of online instruction: ‘It is not clear to the faculty that Web-based courses are really
better…Keeping up with new trends is not always a good thing unless it is very clear
that the trend is in a beneficial direction’ (Gamill & Newman, 2005, p. 67).
Incentives must sometimes be offered before people are willing to try an
innovation. This can be true even when the evidence suggests the innovation is better
than the idea that preceded it. Rogers stated: “adopter incentives increase relative
advantage” (2003, p. 238). Rockwell, Schauer, Fritz and Marx (1999) examined the
incentives which positively influence faculty and administrators to develop distance
education courses. Faculty at a Midwestern land-grant university identified and ranked
factors perceived to be incentives for teaching distance education courses. Intrinsic
rewards, such as self-gratification, recognition of work, peer recognition, and a personal
desire to teach were ranked the highest. Intrinsic rewards may be the reason some faculty
choose to teach distance courses. Porter (2004) found the extra time necessary to learn
the technology and develop online materials was not rewarded in salary or with
17
incentives. Interestingly, monetary awards were not found to be a significant incentive in
the Rockwell, et al. study.
According to Rogers (2003), innovations may be compatible with prior
experiences or ideas. Technology is increasingly a part of an extension agent’s daily
activities (Gregg & Irani, 2004). A brief review of the Journal of Extension uncovered
numerous examples of technology utilized by agents (Carroll & Lovejoy, 2005;
Gustafson & Crane, 2005; Hoffman Tepper & Roebuck, 2006; Kallioranta, Vlosky &
Leavengood, 2006; Massey, Jaskolski & Sweets, 2005). Previous experience with
technology should increase the compatibility of eXtension.
Seevers (1999) investigated the beliefs and organizational values of New Mexico
Cooperative Extension Service employees. Employees were asked to rate 53 value
statements according to their personal beliefs, as well as how evident they believed that
value to be in the organization. Of the original 53 value statements, only 14 were
“extremely valued,” as ranked by at least 75% of the respondents. A number of these
values may have a direct effect on the compatibility of eXtension with organizational
Extension values, such as:
• Honesty/integrity in our work
• Credibility with clientele
• Helping people to help themselves
• High standards of excellence in educational values
• Useful/practical programs
• Teamwork among co-workers
18
• Quick response to clientele concerns/requests
• Flexibility/adaptability in programming
• Recognition that our employees are our organization’s greatest resource
This list of values is highly compatible with the goals of eXtension. However,
Seevers (1999) found inconsistencies between what was valued and what was evident.
Some of the most valued statements were ranked as least evident, including “teamwork
among co-workers,” “high standards of excellence in education programming,” and
“quick response to clientele concerns/requests” (Seevers, 1999, p. 427). These are the
type of values eXtension is designed to address. The launch of eXtension is consistent
with Seevers’ recommendation that action be taken to increase the evidence of important
organizational values. However, eXtension may decrease the degree to which employees
perceived themselves to be valued resources. This could limit the overall compatibility
of eXtension with employees’ values.
Safrit, Conklin, and Jones (2003) examined the organizational values of
Extension educators in Ohio, using a longitudinal design to compare the recognized
values of 1991 and 2001. Of the original twelve values identified in 1991, ten remained
organizational values in 2001. The top four values in 2001 were: (a) “honesty/integrity
in our work,” (b) “credibility with clientele,” (c) “useful/practical programs,” and (d) “an
emphasis on excellence in educational programming” (Safrit, et al., 2003, p. 3).
Despite a significant investment of time and money, efforts to increase the
organizational values of “racial/ethnic diversity among employees,” “racial/ethnic
diversity among clientele,” and “OSU Extension as a leader in overall outreach and
19
engagement at OSU” were largely unsuccessful, resulting in little to no gain (Safrit, et
al., 2003, p. 2). Possible explanations offered by Safrit, et al. addressed the feasibility of
shifting an organization’s values over a decade, possible alienation of personnel as a
result of advocating values not shared by most employees, and the difficulty in changing
culture. The latter may have important implications for eXtension. Although enormous
amounts of time and effort are being placed into promoting the value of eXtension,
Extension agents might not view eXtension as compatible with the organizational
culture.
A follow-up to the Safrit, et al. (2003) study was conducted to determine how
evident important organizational values were perceived to be (Crossgrove, Scheer,
Conklin, Jones, & Safrit, 2005). Significant gaps between the importance and evidence
of values were identified. While “honesty/integrity in our work” and “credibility with
clientele” were considered highly valued within the organization, the “unbiased delivery
of information” and “research-based programs” were most evident (p. 5). Crossgrove, et
al. concluded a disparity existed between belief and practice. The conclusion was
supported by similar findings in previous studies in Kansas and New Mexico (Lavergne
& Rutherford, 2002; Seevers, 2000).
Rogers’ (2003) also stated compatibility could be established if an innovation
met the needs of potential adopters. Although eXtension is primarily geared towards
clientele needs, it is also expected to be a resource for agents (Accenture, 2003). There is
reason to believe some extension agents are receptive to the idea of online professional
development. A survey of human and family extension educators revealed a majority of
20
the respondents were interested in participating in online professional development;
almost 25% were already doing so (Senyurekli, Dworkin, & Dickinson, 2006). Further,
educators indicated they needed professional development opportunities that were
convenient and did not exceed their desired time commitment. eXtension has the
potential to fulfill these needs, thereby enhancing the possibility extension agents will
see the innovation as compatible.
Murphy and Dooley (2001) found agricultural education faculty considered the
use of distance technologies “useful” and “important” for improving teaching (p. 154).
Faculty members believed distance technologies were rapidly going to change how and
what was taught. However, a related study by Murphy and Dooley (2001) determined
some faculty members who claimed to have positive beliefs about distance education
failed to adopt during the five year span of their longitudinal study. Other faculty
members continued to be philosophically opposed to the use of distance technologies.
These findings might have been a sign of cultural resistance to the idea of incorporating
technologies into agricultural education, or the lack of a perceived need to improve the
current system.
A study of a larger population of agricultural educators found a contrasting view.
According to Teig and Miller’s (2006) survey of faculty and staff, distance education
was accepted into the professional culture, although concerns were acknowledged
regarding its compatibility with the vision and mission of agricultural education and a
perceived lack of support from administrators. In addition, faculty and staff did not
universally endorse distance education. The researchers highlighted this as an important
21
point, stating “if a lack of consensus exists, then adoption may be slowed to the point
where it is stagnated, thereby never becoming a reality of the culture” (p. 249). Despite
these issues, Teig and Miller reiterated their conclusion that distance education was
compatible with the values of agricultural education and the greater land-grant mission.
As Cooperative Extension shares the same land-grant mission, this study is particularly
applicable to understanding the potential adoption of eXtension.
Although the literature is informative in regards to the relative advantage and
compatibility of eXtension and distance education, it is strikingly less so for
observability and trialability. It is possible research has not focused on these topics, due
to the greater role relative advantage and compatibility play in the adoption-decision
process, versus observability or trialability (Rogers, 2003). A clear gap exists in the
literature regarding these two characteristics.
As mentioned earlier, the more complex the innovation, the less likely it is to be
adopted. Previous studies have suggested extension agents need professional
development and in-service opportunities to strengthen their computer skills (Albright,
2000; Courson, 1999). However, agents perceived themselves to be competent in the use
of the Internet to find information (Courson, 1999). A lack of computer skills could
increase the perceived complexity of eXtension, but Extension agents may feel very
comfortable accessing eXtension as an information resource. Due to this conflict, it
remains unclear how agents will perceive the complexity of eXtension.
22
Barriers to Adoption
A review of the literature finds a substantial amount of research regarding
barriers which may prevent faculty in higher education from adopting distance education
(e.g., Curbelo-Ruiz, 2002; Kuck, 2006; Porter, 2004). Maguire’s (2005) synthesis of the
literature found a number of recurring barriers identified in multiple studies, such as
faculty time and compensation, technical expertise, concerns about workload, and lack
of funding. In order to derive clearer meaning from the many barriers found to be issues
for faculty, Maguire proposed dividing barriers into three categories: intrinsic, extrinsic,
and institutional. Extrinsic barriers were associated with the institution. Intrinsic
inhibitors included resistance to change and intimidation of technology (Berge, 1998;
Parisot, 1997, in Maguire, 2005). Institutional inhibitors were subdivided into factors
concerning administrative and technical support, and factors addressing technology and
teaching concerns. It is important to understand these differentiations because
eXtension’s diffusion rate may also be impeded by instrinsic, extrinsic, and institutional
barriers. Participant adoption increases when barriers and inhibitors are eliminated
(Schifter, 2000).
Time has been one of the most significant concerns for faculty since distance
education began to gain momentum in the nineties. Murphy & Terry’s study (1998) was
one of the first to report time was perceived by faculty to be a barrier to the diffusion of
distance education in agricultural education. Similar research in the following years
yielded more evidence of time as a barrier, both in agricultural education and other
higher education fields (Berg, Muilenburg, Van Haneghan, 2002; Haber, 2006; Roberts
23
& Dyer, 2005). Nelson and Thompson (2005) reported faculty and program leaders of
agricultural education programs perceived there was a lack of administratively provided
time to develop distance education materials. The amount of time necessary to learn how
to use the technology was also perceived to be a problem (Curbelo-Ruiz, 2002), as was
the amount of time necessary to develop distance education materials (Daugherty &
Funke, 1998). Spector (2005) found experienced online teachers spent substantially
more time on their courses than colleagues teaching face to face classes.
The issue of time spent teaching online is better understood in the context of the
research conducted by Bender, Wood and Vredevoogd (2004). Their work examined the
time necessary to facilitate the same course delivered in face-to-face (F2F) and distance
settings. The courses were identical other than format. The instructors and teaching
assistants for each course maintained daily time logs to track the time needed for each
format. The logs were compared after the completion of the course. Nearly twice as
much time was needed per student for the distance course versus the F2F course.
Whereas only 5.91 hours per student were necessary for F2F, the distance course
required 10.05 hours per student (Bender, et al.). Researchers identified factors such as
time spent on e-mail correspondence, high student anxiety for first time distance
learners, and difficulties using the technologies as attributing the higher distance
workload.
Cavenaugh (2005) had concerns about the conclusions drawn by Bender, et al.
(2004). The reliance on teaching assistants to keep accurate time logs, the inexperience
of the instructor teaching an online class, and the fact the course had never before been
24
offered online were all identified limitations. So, Cavenaugh conducted a study of the
time needed to teach an economics course in F2F and online formats. The selected
course previously had been taught online and the instructor had three years of online
teaching experience. Unlike the course in Bender, et al.’s study, the course chosen by
Cavenaugh did not utilize teaching assistants. However, time logs were still used for data
collection. Time was categorized as course preparation, time spent teaching, office
hours, and final tasks.
Cavenaugh (2005) found nearly the same results as Bender, et al. (2004) even
though he removed the limitations from the prior study. Regardless of the experience of
the professor, the newness of a course, and the involvement of teaching assistants, the
online section still took over twice as long per student as the F2F section. In fact,
Cavenaugh found an even more extreme time difference per student, with 6.77 hours of
time directly attributed to each individual online student versus three to four minutes per
F2F student. Cavenaugh speculated reducing the amount of time spent communicating
with each student would result in decreased course quality. These results raise serious
questions about how eXtension will retain the quality associated with traditional
Extension programs without overloading agents with additional demands on their time.
Many already struggle to manage the stress caused by demands on their time (Ensle,
2005; Harder & Wingenbach, 2006; Place, Jacob, Summerhill, & Arrington, 2000).
Murphrey and Dooley’s (2000) study of the diffusion of distance education
technologies in a college of agriculture and life sciences identified weaknesses and
threats instead of barriers. Weaknesses included slow action on critical issues and loss of
25
interaction, while career and job security, competition from public and private
institutions, and misinformation on the Internet were all perceived threats (Murphrey and
Dooley). All of these are serious concerns for Cooperative Extension to consider with
eXtension. Agents are not likely to support less interaction with clientele and are even
less likely to endorse an innovation they feel will threaten their job security.
Additionally, if distance education truly is slow to respond to critical issues, this does
not bode well for eXtension, which is designed to correct the same criticism of the
traditional Extension system. Most importantly, the threat of misinformation on the
Internet represents a risk to Extension’s reputation as a trustworthy purveyor of non-
biased, research-based information and may damage both eXtension and the traditional
service.
Characteristics of Adopters
Rogers (2003) created five categories to define adopters. Adopter categories were
originally developed to indicate the speed at which an individual adopts relative to
his/her peers, but Rogers found adopters within the same category tend to share common
characteristics. The relationship between adoption speed and adopter characteristics is
such that knowledge of an individual’s adopter category is also educative about his/her
characteristics.
In general, formal education, literacy, cosmopoliteness, and higher social status
are associated with earlier adopters (Rogers, 2003). Innovators are the first category of
people in social system to adopt. They tend to be financially stable and have a high
26
tolerance of risk. Early adopters are respected opinion leaders within their local
communities and may be considered the gatekeepers for an innovation. Members of the
early majority are very social, but without the authority of early adopters. The late
majority is skeptical. They are unlikely to adopt an innovation until is absolutely
necessary or until their peers pressure them into doing so. Laggards are the last within a
social system to adopt. They are characterized by their attachment to the past. Laggards
are very localite and communicate most often with other laggards.
The categorization of an individual as a specific type of adopter is influenced by
the speed with which the individual moves through the innovation-decision process.
Rogers (2003) identified five stages in the innovation-decision process. These are: (a)
knowledge, (b) persuasion, (c) decision, (d) implementation, and (e) confirmation. Li
(2004) revised Rogers’ stages with the addition of a “no knowledge” stage. The no
knowledge stage includes potential adopters who have not yet heard of the innovation.
The knowledge stage occurs “when an individual (or other decision-making unit) learns
of the innovation’s existence and gains some understanding of how it functions”
(Rogers, 2003, p. 20). Individuals may then progress to the persuasion stage and develop
an opinion about the innovation. Next, “an individual engages in activities that lead to a
choice to adopt or reject the innovation” in the decision stage (Rogers, 2003, p. 20).
Individuals choosing to adopt the innovation test their decision in the implementation
stage. Finally, “confirmation occurs when an individual seeks reinforcement of an
innovation-decision that has already been made” (Rogers, 2003, p. 20).
27
A study of the diffusion of Web-based distance education amongst faculty at the
China Agricultural University examined the potential relationships between adopter
characteristics, stage in the innovation-decision process, and the perceived
characteristics of the innovation (Li, 2004; Li & Lindner, 2006). Data analysis revealed
significant relationships between stage in the innovation-decision process and selected
adopter characteristics. Innovation-decision stage was found to be related to
compatibility, observability, complexity, and trialability, but not relative advantage.
Adopter characteristics correlated with stages in the innovation-decision process
were: (a) professional area, (b) teaching experience, (c) distance education experience,
and (d) level of education. Social science faculty were more likely to categorize
themselves in the later stages of the innovation-decision process than physical science
faculty. Teaching experience was positively correlated with adoption. However, faculty
members with over twenty years of experience were less advanced in the innovation-
decision process than faculty with less experience. Most notable was the negative
correlation between level of education and stage in the innovation-decision process.
Faculty members with doctoral degrees categorized themselves in the early stages, while
faculty members with bachelor degrees perceived themselves to be in the later stages. Li
and Lindner’s (2006) results challenged Roger’s (2003) description of highly educated
people as innovators, early adopters, or early majority.
Dromgoole and Boleman (2006) conducted a Delphi panel study with Texas
Extension agents. In part, the objectives of the study were to determine the advantages
and disadvantages of using distance education as programming tool for Extension. The
28
study also examined the type of programs most suitable for distance education. Programs
typically associated with horticulture, such as lawn and garden care, were valued the
highest. Topics related to 4-H and agriculture were moderately valued. Family and
consumer science topics were perceived to have the lowest value. These findings
indicate a need to include programmatic area as a demographic variable in the study of
eXtension. It is possible agents’ perceptions of eXtension will be related to their
programmatic area.
A census survey was conducted in North Carolina’s Cooperative Extension
system to compare employee characteristics with levels of computer anxiety and
communication preference (Emmons, 2003). Emmons found that computer anxiety did
exist amongst the employees, but that it did not influence their communication
preferences. Characteristics affecting computer anxiety included: (a) gender, (b) level of
education, (c) age, and (d) computer experience. The same characteristics were found to
be significantly related to Internet usage within a similar Extension population (Owen,
1999) as well as significantly related to faculty participation in distance education at a
public university (Gupton, 2004).
Conceptual Framework
The conceptual framework of this study is adapted from Li (2004). Li used
Rogers’ (2003) theory of the diffusion of innovations as a theoretical framework to study
the adoption of web-based distance education (WBDE). Li conceptualized faculty
29
members’ perceptions of the attributes and barriers of WBDE as dependent upon their
stages in the innovation-decision process and their personal characteristics.
This study departs from that model in that agents’ stages in the innovation-
decision process are conceptualized as dependent upon agents’ perceptions of the
characteristics and barriers of eXtension and their personal characteristics. Figure 1
illustrates the conceptual framework for this study.
Figure 1. Conceptual framework for the diffusion of eXtension.
Stage in the Innovation-Decision Process 1. No knowledge 2. Knowledge 3. Persuasion 4. Decision 5. Implementation 6. Confirmation
Characteristics of an Innovation 1. Relative Advantage 2. Observability 3. Compatibility 4. Trialability 5. Complexity
Barriers to Adoption 1. Concerns about time 2. Concerns about incentives 3. Financial concerns 4. Planning issues 5. Technology concerns
Characteristics of Agents 1. Professional role 2. Geographic location3. Gender 4. Age 5. Education
Diffusion of eXtension
30
CHAPTER III
METHODOLOGY
A descriptive and correlational design was used for this study. The target
population was Texas Cooperative Extension agents employed in 2007. According to the
Texas Cooperative Extension office, there were 533 county agents (K. A. Bryan,
personal communication, February 12, 2007). Bartlett, Kotrlik, and Higgins (2001)
recommended using Cochran’s (1977) formula for categorical data to calculate sample
size when a categorical variable (stage in the innovation-decision process) has a primary
role in data analysis. Cochran’s correction was used to adjust the sample size, because it
included more than five percent of the target population. The final sample size (N = 237)
was based on the assumption of a 65% response rate. Random sampling was used to
select participants for the study (Gall, Gall, & Borg, 2007).
County extension agents in Texas may specialize in agriculture, horticulture,
4-H, natural resources, family and consumer sciences, or nutrition. The vision of Texas
Cooperative Extension is “To be the premier 21st Century outreach and continuing
education organization in Texas responding to the needs of the people” (Texas
Cooperative Extension, 2006, Vision). According to the Agency Strategic Plan for 2006
– 2011, programmatic priorities are focused on (a) sustainable agriculture, (b) natural
resources, (c) economic development, (d) physical and economic security for families,
(e) youth development, and (f) increased accessibility (Texas Cooperative Extension,
2006).
31
An online questionnaire was used to collect data. The original instrument was
developed by Li (2004) to examine the diffusion of distance education at the China
Agricultural University. Li’s instrument contained four sections examining (a) stage in
the innovation-decision process, (b) the attributes of web-based distance education, (c)
the barriers to web-based distance education (WBDE), and (d) the characteristics of
respondents. Rogers’ (2003) proposed characteristics of an innovation were used to
measure attributes. Ten potential barriers to the adoption of WBDE were studied: (a)
concerns about time, (b) concerns about incentives, (c) WBDE program credibility, (d)
financial concerns, (e) planning issues, (f) conflict with traditional education, (g) fear of
technology, (h) technical expertise, (i) administrative support, and (j) infrastructure.
Demographic variables were: (a) professional area, (b) gender, (c) age, (d) level of
education, (e) academic rank, (f) teaching experience, and (g) distance education
experience.
Li’s original instrument was modified by the researcher to fit the context of
eXtension, based upon studies from the review of literature (Emmons, 2003; Li, 2004;
Maguire, 2005; Rockwell, Schauer, Fritz, & Marx, 1999; Rogers, 2003; Seevers, 1999).
It was then converted to an online format (see Appendix A for questionnaire layout). The
questionnaire contained four sections examining (a) stage in the innovation-decision
process, (b) the characteristics of eXtension, (c) the barriers to eXtension, and (d) the
characteristics of respondents.
Section A of the questionnaire was designed to measure each participant’s stage
in the innovation-decision process. The first item was easy, interesting, and applicable to
32
everyone, as recommended by Dillman (2000). Participants were instructed to rate the
ability of Cooperative Extension to meet the information needs of the general public in
the 21st century using traditional delivery methods. Response options were “poor,”
“adequate,” and “excellent.” The second item asked participants to select the statement
that most closely matched their innovation-decision stage. Participants could select from
six stages. Five of the stages were based upon Rogers’ (2003) theory of the innovation-
decision process: (a) knowledge, (b) persuasion, (c) decision, (d) implementation, and
(e) confirmation. A sixth stage, no knowledge, was included based upon Li’s (2004)
conclusion that the five stages failed to include adopters who had yet to encounter the
innovation.
Section B was designed to measure the agents’ perceptions of eXtension.
Participants were asked to rate 28 statements based upon a six-point Likert-type scale (1
= Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 =
Agree, 6 = Strongly Agree). The scale was interpreted as follows: Strongly Disagree =
1.00 – 1.50, Disagree = 1.51 – 2.50, Somewhat Disagree = 2.51 – 3.50, Somewhat Agree
= 3.51 – 4.50, Agree = 4.51 – 5.50, Strongly Agree = 5.51 – 6.00. Rogers’ (2003)
characteristics of an innovation were used to categorize the statements into constructs as
follows: (a) relative advantage, (b) compatibility, (c) observability, (d) trialability, and
(e) complexity. The findings of Rockwell, Schauer, Fritz, and Marx (1999) and Seevers
(1999) contributed to the development of individual statements by the researcher.
Statements were also modified from Li’s (2004) original instrument. Table 1 includes a
sample of the statements from Section B.
33
Table 1 Sample Statements from Section B: Characteristics of eXtension Statement Characteristic Cooperative Extension will become more popular due to the addition of eXtension.
Relative Advantage
eXtension supports the mission of Cooperative Extension. Compatibility eXtension seems difficult to use. Complexity I can select the features of eXtension that I want to use. Trialability It will be easy for other Agents to observe if I am using eXtension.
Observability
Section C measured the agents’ perceptions of potential barriers to the adoption
of eXtension. A six-point Likert-type scale (1 = Strongly Disagree, 2 = Disagree, 3 =
Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree) was used to
rate 31 statements. The scale was interpreted as follows: Strongly Disagree = 1.00 –
1.50, Disagree = 1.51 – 2.50, Somewhat Disagree = 2.51 – 3.50, Somewhat Agree = 3.51
– 4.50, Agree = 4.51 – 5.50, Strongly Agree = 5.51 – 6.00. Categories suggested by Li
(2004) and Maguire (2005) were used to cluster the statements into constructs. The
constructs were (a) concerns about time, (b) concerns about incentives, (c) financial
concerns, (d) planning issues, and (e) technology concerns. Individual statements in
Section C consisted of a combination of researcher-developed statements and statements
modified from Li (2004). A sample of statements from Section C is presented in Table 2.
34
Table 2 Sample Statements from Section C: Potential Barriers Statement Barrier Lack of time available to access eXtension materials. Concerns about time Lack of monetary compensation for developing eXtension resources.
Concerns about incentives
My state Extension program does not have enough money to support eXtension.
Financial concerns
Lack of identified need (perceived or real) for eXtension. Planning issues Lack of agent access to computers. Technology concerns
Selected personal characteristics (Extension role, county category, age, gender,
and education) were measured in Section D. The variables were selected because of their
relationships with adopter categories and the stages of the innovation-decision process
(Rogers, 2003). Participants were asked to indicate their primary role (4-H/youth
development, agriculture, family and consumer science, horticulture, natural resources,
or nutrition education) in Extension as determined by percentage of responsibilities.
County categories were measured using the designations (I, II, III, IV, V, VI, VII)
created by Texas Cooperative Extension. Category designations are a function of county
population and revenue. Increases in county population and revenue correspond with
higher category designations (i.e., Harris County is in Category VII). Age was measured
with categories (18-29, 30-39, 40-49, 50-59, 60+). Gender response options were male
or female. Education response options were categorized according to highest degree
obtained (high school, associate’s, bachelor’s, master’s, or Ph.D).
A comment box was also provided in Section D to offer respondents the
opportunity to provide additional feedback. The inclusion of the comment box was based
35
upon the idea of social exchange and rewards (Dillman, 2000). Data collected from the
comment box were not treated as a variable for analysis in this study.
The instrument was reviewed for content validity by a panel of experts composed
of faculty members in the Department of Agricultural Education, Leadership, and
Communications at Texas A&M University and the national marketing director of
eXtension. The wording for several statements was modified and additional statements
were added to increase the likelihood of obtaining valid and reliable results.
Due to the need to survey human subjects, a request for exemption was submitted
and approved by the Texas A&M University Internal Review Board in October 2006.
An additional request was submitted and approved by the Montana State University
Internal Review Board in November 2006 for the pilot study.
To test for reliability and face validity, a pilot test was conducted with 88
Montana State Cooperative Extension agents not included in the sample population. On
December 4, 2006, a pre-notice was e-mailed to participants notifying them of the
upcoming survey. Four days later, instructions for completing and assessing the pilot
questionnaire, a unique password, and a hyperlink to the information and consent page
were e-mailed to each participant. There were two e-mails returned due to invalid
addresses and two people opted out; this reduced the accessible population to 84 agents.
Access to the questionnaire was granted to participants who opted to enter their
passwords on the information and consent page. The agents were also notified about the
pilot test by Doug Steele, Vice-Provost and Director of Extension, in his weekly e-
newsletter. A response rate of 56% (N = 47) was obtained.
36
Cronbach’s alpha coefficient was calculated for each internal scale (Cronbach,
1951). Cronbach’s alpha coefficients measure the internal consistency of items within a
scale and can be used to indicate reliability. A reliability level of .80 or higher is
considered acceptable (Gall, Gall, & Borg, 2007). Reliability levels for the internal
scales are presented in Table 3. One item was removed to increase the reliability of the
observability scale.
Table 3 Reliability Levels of Internal Scales α Levels Internal Scale Pilot
Study Formal Study
Relative Advantage .836 .887 Compatibility .837 .873 Complexity .819 .860 Trialability .814 .952 Observability .826a .881 Concerns about time .902 .890 Concerns about incentives .899 .924 Financial concerns .880 .909 Planning issues .837 .921 Technology concerns .911 .883 Note: Reliability levels ≥ .80 were considered acceptable. aOriginal α level was .758; one item was deleted.
Based upon pilot participant feedback, a response option for community
development was added to the demographic item about primary role. Based upon
feedback from the expert panel, the response options for residency were revised to use
the county category nomenclature common to Texas Cooperative Extension. No other
revisions were necessary.
37
Formal data collection with the finalized instrument began in February 2007.
Data were collected according to Dillman’s (2000) Tailored Design Method. On
February 22, 2007, a pre-notice was e-mailed to the participants. The cover letter, a
unique password, and a hyperlink to the information sheet and consent page were sent on
February 26, 2007. Participants chose to enter passwords on the information and consent
page to access the questionnaire. Of the original 237 addresses, 236 were valid. An
attempt to correct the faulty e-mail address was made by contacting the State
Cooperative Extension office. This effort resulted in an accessible population of 236.
Four reminders were sent (March 1, March 5, March 8, and March 15, 2007) to increase
response rate, as recommended by Dillman (2000). Data collection ceased at 12:00 p.m.,
on March 14, 2007.
Data Analysis
The data were analyzed using descriptive and inferential statistics in the
Statistical Package for Social Sciences (SPSS, 14.0). The alpha level for data analysis
was set a priori at .05. The independent variables for the study were (a) primary agent
role, (b) county category, (c) education, (d) age, and (e) gender. The dependent variables
for the study were: (a) stage in the innovation-decision process, (b) relative advantage,
(c) compatibility, (d) complexity, (e) trialability, (f) observability, (g) concerns about
time, (h) concerns about incentives, (i) financial concerns, (j) planning issues, and (k)
technology concerns.
38
Objective One
Frequencies and percentages were calculated to describe the selected personal
characteristics (primary agent role, county category, education, age, and gender) of
Texas Cooperative Extension agents. The use of frequencies and percentages is
appropriate to describe categorical data (Gall, Gall, & Borg, 2007).
Objective Two
Frequencies and percentages were used to describe the participants’ stages in the
innovation-decision process (no knowledge, knowledge, persuasion, decision,
implementation, and confirmation). Innovation-decision stage was treated as a dependent
variable in the study.
Objective Three
Agents’ perceptions of eXtension were described by cumulatively summating the
scores for individual items within each construct for each participant. The summated
scores were then used to calculate the mean construct scores for each participant and the
mean and standard deviation for each construct overall.
The constructs were consistent with the characteristics of an innovation: (a)
relative advantage, (b) compatibility, (c) complexity, (d) trialability, and (e)
observability (Rogers, 2003). The means and standard deviations for all the items within
each construct were also calculated.
39
Objective Four
There were five constructs which measured agents’ perceptions of potential
barriers to the adoption of eXtension: (a) concerns about time, (b) concerns about
incentives, (c) financial concerns, (d) planning issues, and (e) technology concerns. The
perceptions of potential barriers were described by cumulatively summating the scores
for individual items within each construct for each participant. The summated scores
were then used to calculate the mean construct scores for each participant and the means
and standard deviations for each construct overall.
Objective Five
One-way analysis of variance (ANOVA) and t-tests were conducted to determine
if significant differences existed between the selected personal characteristics (primary
agent role, county category, education, age, and gender) and agents’ perceptions of
eXtension based upon Rogers’ (2003) characteristics of an innovation (relative
advantage, compatibility, observability, complexity, and trialability). Cohen’s
interpretation of effect sizes were used to evaluate the strength of association between
the variables (Cohen, 1988; Cohen, 1992). ANOVA results were interpreted by defining
small, medium, and large effect sizes at the .10, .25, and .40 levels, respectively (Cohen,
1988). Results from t-tests were interpreted by defining small, medium, and large effect
sizes which were respectively determined at the .20, .50, and .80 levels (Cohen, 1988).
When appropriate, post hoc tests were conducted to identify the source of significant
differences between groups.
40
Objective Six
One-way analysis of variance (ANOVA) and t-tests were conducted to determine
if significant differences existed between agents’ perceptions of potential barriers
(concerns about time, concerns about incentives, financial concerns, planning issues, and
technology concerns) to the adoption of eXtension based upon selected personal
characteristics (primary agent role, county category, education, age, and gender).
Cohen’s interpretation of effect sizes were used to evaluate the strength of association
between the variables (Cohen, 1988; Cohen, 1992). ANOVA results were interpreted by
defining small, medium, and large effect sizes at the .10, .25, and .40 levels, respectively
(Cohen, 1988). Results from t-tests were interpreted by defining small, medium, and
large effect sizes were at the .20, .50, and .80 levels, respectively (Cohen, 1988). When
appropriate, post hoc tests were conducted to identify the source of significant
differences between groups.
Objective Seven
Relationships between perceptions of eXtension and potential barriers were
described by calculating Pearson’s product-moment correlation coefficient. Pearson’s r
describes the strength of a relationship between two continuous variables (Gall, Gall, &
Borg, 2007). Davis’ (1971) interpretation of Pearson’s r was used to describe the
strength of the relationships (Table 4).
41
Table 4 Relationship Descriptors Descriptor Coeffiecient (r) Very strong r ≥ .70 Substantial .50 ≥ r ≥ .69 Moderate .30 ≥ r ≥ .49 Low .10 ≥ r ≥ .29 Negligible .01 ≥ r ≥ .09 Objective Eight
A chi-square test was conducted to test the distribution of participants between
the stages in the innovation-decision process. Chi-square tests can be used to determine
if significant differences exist between the observed and expected frequencies for a data
variable with two or more categories (Gall, Gall, & Borg, 2007). The data were
evaluated using chi-square statistics and levels of significance.
Objective Nine
Discriminant function analysis was used to determine the predictor variables for
stage in the innovation-decision process, based upon agents’ perceptions of the
characteristics of eXtension, perceptions of the barriers to the diffusion of eXtension,
and selected personal characteristics. According to Gall, Gall, and Borg (2007),
discriminant function analysis is the appropriate statistical procedure when the criterion
variable is categorical.
42
CHAPTER IV
FINDINGS
This chapter presents the response rate, a comparison of early and late
respondents, and the findings by study objective.
Response Rate
The target population was Texas Cooperative Extension agents employed in
2007. According to the Texas Cooperative Extension office, there were 533 county
agents (K. A. Bryan, personal communication, February 12, 2007). Random sampling
was used to select participants (N = 237) for the study (Gall, Gall, & Borg, 2007).
An initial response rate of 21.9% (n = 52) was received. Efforts were made to
increase response rate through the use of four e-mailed reminders. A final response rate
of 66.90% (N = 158) was obtained. Eight participants opted out. There were 25
responses removed due to missing data, reducing the number of usable responses to 125.
Non-Response Error
Non-response error was controlled according to one of the procedures suggested
by Lindner, Murphy, and Briers (2001). Mann-Whitney U tests and two-group
independent t-tests were used to compare the early wave of respondents (n = 62) to the
last wave of respondents (n = 63) on the primary variables of interest (Gall, Gall, &
Borg, 2007). Early respondents were defined as the first 50% to respond. Late
43
respondents were defined as the second 50% to respond. The primary variables of
interest were (a) participants’ stages in the innovation-decision process (no knowledge,
knowledge, persuasion, decision, implementation, and confirmation), (b) agents’
perceptions of eXtension (based on relative advantage, compatibility, complexity,
trialability, and observability), and (c) agents’ perceptions of potential barriers (concerns
about time, concerns about incentives, financial concerns, planning issues, and
technology concerns) to the adoption of eXtension.
Data in Table 5 indicated no significant difference (p > .05) between early and
late respondents existed for participants’ stage in the innovation-decision process.
Table 5 Comparison of Early and Late Respondents’ Stage in Innovation-Decision Process Response NK
f K f
P f
D f
I f
C f
u Rank
p
Earlya 18 36 1 2 3 2 62.16 .908 Lateb 21 28 3 2 7 1 62.84 Note. N = 124. NK = no knowledge; K = knowledge; P = persuasion; D = decision; I = implementation; C = confirmation. an = 62. bn = 62.
As shown in Table 6, no significant differences between early and late
respondents were found for agents’ perceptions of eXtension based on (a) relative
advantage, t (123) = 1.08, p > .05; (b) compatibility, t (123) = .19, p > .05; (c)
complexity, t (123) = .50, p > .05; or (d) trialability, t (123) = .24, p > .05. A significant
difference between early and late respondents was found for agents’ perceptions of
eXtension based on observability, t (123) = 2.21, p < .05.
44
Table 6 Comparison of Early and Late Respondents’ Perceptions of eXtension Construct by Response n M SD t p Relative Advantage
Early Late
62 63
3.68 3.84
.88 .77
1.08
.28
Compatibility Early Late
62 63
4.33 4.36
.93 .80
.19
.85
Complexity Early Late
62 63
4.52 4.44
.74 .80
.50
.62
Trialability Early Late
62 63
4.13 4.10
.98 .77
.24
.81
Observability Early Late
62 63
2.66 3.04
1.03 .90
2.21*
.03
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. *p <.05 Table 7 shows agents’ perceptions of potential barriers to eXtension. There were
no significant differences related to (a) concerns about time, t (123) = .20, p > .05; (b)
concerns about incentives, t (123) = .50, p > .05; (c) financial concerns, t (123) = .52, p >
.05; (d) planning issues, t (123) = 1.90, p > .05; or (e) technology concerns, t (123) = .41,
p > .05.
45
Table 7 Comparison of Early and Late Respondents’ Perceptions of Potential Barriers Construct by Response n M SD t p Concerns about time
Early Late
62 63
4.13 4.10
.85 .90
.20
.84
Concerns about incentives Early Late
62 63
3.85 3.94
1.00 1.00
.50
.62
Financial concerns Early Late
62 63
3.72 3.82
1.00 1.02
.52
.60
Planning issues Early Late
62 63
4.00 3.68
.97 .88
1.90
.06
Technology concerns Early Late
62 63
3.69 3.62
1.04 .91
.41
.68
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
Based upon the lack of significant differences between early and late respondents
for the majority of the primary variables of interest, it was concluded the results could be
generalized to the target population. However, there was a significant difference between
early and late respondents for the primary variable of observability. Therefore, caution is
urged before generalizing the respondents’ perceptions of observability to any other
population.
46
Objective One: Findings
Data for Texas Cooperative Extension County Extension agents’ selected
personal characteristics (primary agent role, county category, education, age, and
gender) is reported in this section.
Primary Agent Role
Table 8 shows the primary agent roles reported by the respondents (N = 125).
The majority of respondents had primary responsibilities in the areas of agriculture (n =
45), family and consumer sciences (n = 39), and 4-H/youth development (n = 26). There
were fewer agents in the areas of horticulture (n = 8) and natural resources (n = 3). No
respondents reported community development as a primary agent role.
Table 8 Distribution of Respondents by Primary Agent Role Role f % 4-H/Youth development 26 20.80Agriculture 45 36.00Community development 0 0 Family and consumer sciences 39 31.20Horticulture 8 6.40 Natural resources 3 2.40 Nutrition education 4 3.20
47
Residence
Responding agents were distributed throughout the seven county categories (see
Table 9). Categories III, IV, and V collectively accounted for 61.6% of the respondents.
The fewest number of respondents (n = 6) worked in Category VI counties.
Table 9 Distribution of Respondents by County Category County Category f % Category I 9 7.20 Category II 11 8.80 Category III 19 15.20Category IV 39 31.20Category V 19 15.20Category VI 6 4.80 Category VII 11 8.80 Note. Category designations increase with county population and revenue. Education
As shown in Table 10, all of the responding agents had completed a degree in
higher education. There were 38 respondents who had completed a bachelor’s degree.
Due to the low number of respondents with a doctoral degree, respondents with either a
master’s or a doctoral degree (n = 87) were combined into a category called “graduate
degree” for the purpose of this objective. No respondents reported having a terminal
degree at the high school or associate’s levels.
48
Table 10 Distribution of Respondents by Educational Attainment Degree f % High School 0 0 Associate’s 0 0 Bachelor’s 38 30.40Graduate degree 87 69.60 Age
Table 11 shows the distribution of responding agents among four age ranges.
Due to the low number of respondents in the 60+ age range, respondents in either the
50 - 59 range or 60+ range (n = 37) were combined into a category called “50+” for all
data analysis in this study. The highest number of respondents (n = 41) reported their age
in the 30 - 39 range. Thirty agents reported their age to be in the 40 - 49 range. The
fewest number of agents were in the 18 - 29 years range (n = 19).
Table 11 Distribution of Respondents by Age Range Age Range f % 18 - 29 19 15.2030 - 39 41 32.8040 - 49 30 24.0050+ 37 28.00 Gender
Table 12 shows the distribution of responding agents by gender. Approximately
46% of respondents were female and 51% were male.
49
Table 12 Distribution of Respondents by Gender Gender f % Female 58 46.40Male 64 51.20
Objective Two: Findings
The second objective was to describe agents’ stages in the innovation-decision
process (no knowledge, knowledge, persuasion, decision, implementation, and
confirmation). The majority of agents reported they were in the “no knowledge” (n = 39)
or “knowledge” (n = 64) stages. The remaining agents were in the “implementation”
(n = 10), “persuasion” (n = 4), “decision” (n = 4), or “confirmation” (n = 3) stages. The
distribution of responding agents by stage in the innovation-decision process is shown in
Table 13.
Table 13 Distribution of Respondents by Innovation-Decision Stage Stage in the Innovation-Decision Process
Corresponding Items f %
No knowledge I had never heard of eXtension before reading the description provided in this questionnaire.
39 31.20
Knowledge I understand its purposes and features, but have not decided whether or not I like or dislike eXtension.
64 51.20
Persuasion I have decided. I like or dislike eXtension. 4 3.20 Decision I have decided. I will or will not use eXtension. 4 3.20 Implementation I am using eXtension. 10 8.00 Confirmation I have used eXtension long enough to evaluate
whether or not eXtension will be part of my future in Extension.
3 2.40
50
Figure 2 displays the percentage of respondents in each of the stages in the
innovation-decision process. Due to space constraints, the stages are abbreviated as
follows: NK = no knowledge, K = knowledge, P = persuasion, D = decision, I =
implementation, and C = confirmation.
0
20
40
60
Stage
Perc
enta
ge o
f Ado
pter
s
Distribution ofRespondents
31.2 51.2 3.2 3.2 8 2.4
NK K P D I C
Figure 2. Distribution of respondents in the stages of the innovation-decision process.
Objective Three: Findings
The third objective was to describe agents’ perceptions of eXtension based upon
Rogers’ (2003) characteristics of an innovation (relative advantage, compatibility,
observability, complexity, and trialability). On a six-point scale (1 = Strongly Disagree,
2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly
Agree), agents tended to somewhat agree eXtension was not complex (M = 4.48, SD =
51
.77), was compatible with their values and beliefs (M = 4.35, SD = .87), was trialable (M
= 4.11, SD = .88), and had a relative advantage (M = 3.75, SD = .82). Agents somewhat
disagreed eXtension was observable (M = 2.85, SD = .98). A summary of the means and
standard deviations for each construct is provided in Table 14.
Table 14 Respondents’ Perceptions of eXtension by Construct Construct M SD Complexity 4.48 .77 Compatibility 4.35 .87 Trialability 4.11 .88 Relative Advantage 3.75 .82 Observability 2.85 .98 Note. N = 125. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Relative Advantage
Responses for the eight relative advantage items ranged from “strongly disagree”
to “strongly agree” on a six-point scale (1 = Strongly Disagree, 2 = Disagree, 3 =
Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree). Table 15
displays the means and standard deviations for each item. Respondents tended to
somewhat agree with the statement, “eXtension increases the accessibility of
Cooperative Extension programming” (M = 4.35, SD = 1.01). They tended to somewhat
disagree with the statement, “I envision spending less time answering routine questions
by referring clientele to eXtension” (M = 2.87, SD = 1.28).
52
Table 15 Respondents’ Perceptions of the Relative Advantage of eXtension by Individual Response Item Relative Advantage Items N M SD eXtension increases the accessibility of Cooperative Extension programming.
125 4.35 1.01
I envision finding information faster by using eXtension as a resource.
125 4.16 1.10
eXtension is a cost-savings effort that prevents duplication of efforts.
125 3.98 1.02
Using eXtension as a resource will make doing my job easier. 124 3.86
1.03
Cooperative Extension could become more popular due to the addition of eXtension.
125 3.83 1.01
eXtension creates more funding opportunities for Cooperative Extension.
125 3.69 1.07
eXtension provides agents with more time to serve traditional clientele.
123 3.26 1.23
I envision spending less time answering routine questions by referring clientele to eXtension.
124 2.87 1.28
Note. Overall M = 3.75, SD = .82. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Compatibility
Responses for the four compatibility items ranged from “strongly disagree” to
“strongly agree” on a six-point scale (1 = Strongly Disagree, 2 = Disagree, 3 =
Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree). Table 16
displays the means and standard deviations for each item. Respondents tended to agree
with the statement “eXtension provides research-based information to the public” (M =
4.86, SD = .94). They somewhat agreed with the statement “eXtension can be used to
cultivate sustainable relationships in the community” (M = 3.80, SD = 1.28).
53
Table 16 Respondents’ Perceptions of the Compatibility of eXtension by Individual Response Item Compatibility Items N M SD eXtension provides research-based information to the public. 125 4.86 .94 eXtension supports the mission of Cooperative Extension. 125 4.66 .99 Online programs are an acceptable way for Cooperative Extension to deliver programs.
125 4.41 1.23
My vision for the future of Cooperative Extension includes eXtension.
124 4.27 1.14
eXtension will allow me to deliver programs based upon the needs of clientele.
125 4.07 1.01
eXtension can be used to cultivate sustainable relationships in the community.
125 3.80 1.28
Note. Overall M = 4.35, SD = .87. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Observability
Responses for the three observability items ranged from “strongly disagree” to
“strongly agree” on a six-point scale (1 = Strongly Disagree, 2 = Disagree, 3 =
Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree). Table 17
displays the means and standard deviations for each item. Respondents tended to
somewhat disagree with the statements “Agents will easily be able to identify people
who are involved in eXtension” (M = 3.14, SD = 1.10), “The official eXtension website
is well-publicized” (M = 2.74, SD = 1.09), and “eXtension is a highly visible program”
(M = 2.69, SD = 1.08).
54
Table 17 Respondents’ Perceptions of the Observability of eXtension by Individual Response Item Observability Items N M SD Agents will easily be able to identify people who are involved in eXtension.
125 3.14 1.10
The official eXtension website is well-publicized. 125 2.74 1.09 eXtension is a highly visible program. 125 2.69 1.08 Note. Overall M = 2.85, SD = .98. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Complexity
Responses for the four complexity items ranged from “strongly disagree” to
“strongly agree” on a six-point scale (1 = Strongly Disagree, 6 = Strongly Agree). Table
18 displays the means and standard deviations for each item. Respondents tended to
agree with the statements, “E-mail is a tool that I am comfortable using” (M = 5.19, SD
= .95), “Using online resources to access information is easy for me” (M = 4.68, SD =
1.03), and “I am good at navigating websites to find the information I need” (M = 4.66,
SD = 1.13). The agents somewhat agreed with the statements “It will be easy for me to
download information from eXtension to my computer” (M = 4.42, SD = 1.07), “Using
eXtension seems simple” (M = 3.98, SD = .92), and “eXtension seems user-friendly” (M
= 3.97, SD = .91).
55
Table 18 Respondents’ Perceptions of the Complexity of eXtension by Individual Response Item Complexity Items N M SD E-mail is a tool that I am comfortable using. 125 5.19 .95 Using online resources to access information is easy for me. 125 4.68 1.03 I am good at navigating websites to find the information I need.
125 4.66 1.13
It will be easy for me to download information from eXtension to my computer.
125 4.42 1.07
Using eXtension seems simple. 125 3.98 .92 eXtension seems user-friendly. 125 3.97 .91 Note. Overall M = 4.48, SD = .77. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Trialability
Responses for the four trialability items ranged from strongly disagree to strongly
agree, on a six-point scale (1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat
Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree). Table 19 displays the
means and standard deviations for each item. Respondents somewhat agreed with the
statements “I can use eXtension without committing to develop new materials for it” (M
= 4.20, SD = .94), “I can test key features of eXtension with no obligation for continued
or future use” (M = 4.10, SD = .94), “I can select the features of eXtension that I want to
use” (M = 4.08, SD = .94), and “I will be able to define the terms of my use of
eXtension, if any” (M = 4.06, SD = .95).
56
Table 19 Respondents’ Perceptions of the Trialability of eXtension by Individual Response Item Trialability Items N M SD I can use eXtension without committing to develop new materials for it.
124 4.20 .94
I can test key features of eXtension with no obligation for continued or future use.
125 4.10 .94
I can select the features of eXtension that I want to use. 125 4.08 .94 I will be able to define the terms of my use of eXtension, if any.
124 4.06 .95
Note. Overall M = 4.11, SD = .88. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
Objective Four
The fourth objective was to describe agents’ perceptions of potential barriers
(concerns about time, concerns about incentives, financial concerns, planning issues, and
technology concerns) to the adoption of eXtension. On a six-point scale (1 = Strongly
Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 =
Strongly Agree), agents tended to somewhat agree concerns about time (M = 4.12, SD =
.87). concerns about incentives (M = 3.90, SD = 1.00), planning issues (M = 3.84, SD =
.93), financial concerns (M = 3.77, SD = 1.01), and technology concerns (M = 3.66, SD =
.97) were potential barriers to adoption of eXtension. The means and standard deviations
for each construct are presented in Table 20.
57
Table 20 Respondents’ Perceptions of Potential Barriers to eXtension by Construct Construct N M SD Concerns about time 125 4.12 .87 Concerns about incentives 125 3.90 1.00 Planning issues 125 3.84 .93 Financial concerns 125 3.77 1.01 Technology concerns 125 3.66 .97 Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Concerns about Time
Responses for the five items addressing potential concerns about time ranged
from “strongly disagree” to “strongly agree” on a six-point scale (1 = Strongly Disagree,
6 = Strongly Agree). Table 21 displays the means and standard deviations for each item.
Respondents tended to somewhat agree with the statements “Lack of time to learn how
to incorporate eXtension into typical job responsibilities” (M = 4.25, SD = 1.00), “Lack
of time to meet the needs of traditional Extension clientele” (M = 4.14, SD = 1.04),
“Lack of time available to respond to online requests for information” (M = 4.10, SD =
1.05), “Lack of time available to search for information on eXtension” (M = 4.05, SD =
1.09), and “Lack of time available to access eXtension materials” (M = 4.05, SD = 1.05).
58
Table 21 Respondents’ Perceptions of Concerns about Time as a Potential Barrier to eXtension by Individual Response Item Concerns about Time Items N M SD Lack of time to learn how to incorporate eXtension into typical job responsibilities.
125 4.25 1.00
Lack of time to meet the needs of traditional Extension clientele.
125 4.14 1.04
Lack of time available to respond to online requests for information.
125 4.10 1.05
Lack of time available to search for information on eXtension. 124 4.05 1.09 Lack of time available to access eXtension materials. 125 4.05 1.05 Note. Overall M = 4.12, SD = .87. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Concerns about Incentives
Responses for the seven items addressing potential concerns about incentives
ranged from “strongly disagree” to “strongly agree” on a six-point scale (1 = Strongly
Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 =
Strongly Agree). Table 22 displays the means and standard deviations for each item.
Respondents tended to somewhat agree with all seven statements. The statement “Lack
of correlation between agent use of eXtension and performance evaluation” (M = 4.07,
SD = 1.11) had the highest mean. The statement “Lack of support from state
administrators” (M = 3.74, SD = 1.21) had the lowest mean.
59
Table 22 Respondents’ Perceptions of Concerns about Incentives as a Potential Barrier to eXtension by Individual Response Item Concerns about Incentives Items N M SD Lack of correlation between agent use of eXtension and performance evaluation.
124 4.07 1.11
Lack of county/parish recognition for using eXtension. 124 4.04 1.20 Lack of salary increase for using eXtension. 125 4.00 1.25 Lack of monetary compensation for developing eXtension resources.
125 3.92 1.15
Lack of awards for involvement with eXtension. 124 3.75 1.21 Lack of support from local administrators. 125 3.75 1.28 Lack of support from state administrators. 125 3.74 1.21 Note. Overall M = 3.90, SD = 1.00. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Financial Concerns
Responses for the five items addressing potential financial concerns ranged from
“strongly disagree” to “strongly agree” on a six-point scale (1 = Strongly Disagree, 6 =
Strongly Agree). Table 23 displays the means and standard deviations for each item.
Respondents tended to somewhat agree with the statement “Cost of purchasing the
necessary computer technologies” (M = 4.09, SD = 1.24). They tended to somewhat
disagree with the statement “My state Extension program does not have enough money
to support eXtension” (M = 3.46, SD = 1.07).
60
Table 23 Respondents’ Perceptions of Financial Concerns as a Potential Barrier to eXtension by Individual Response Item Financial Concerns Items N M SD Cost of purchasing the necessary computer technologies. 125 4.09 1.24 Lack of financial resources to promote eXtension locally. 125 3.96 1.20 Concerns about sharing revenue from eXtension with multiple partnering institutions.
125 3.69 1.16
Lack of financial resources to support the necessary computer technologies.
125 3.66 1.24
My state Extension program does not have enough money to support eXtension.
123 3.46 1.07
Note. Overall M = 3.77, SD = 1.01. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Planning Issues
Responses for the five items addressing potential planning issues ranged from
“strongly disagree” to “strongly agree” on a six-point scale (1 = Strongly Disagree, 6 =
Strongly Agree). Table 24 displays the means and standard deviations for each item.
Respondents tended to somewhat agree with all five statements. The statement “Lack of
planned opportunities for agents to learn about eXtension” (M = 4.10, SD = 1.08) had the
highest mean. The statement “Lack of strategic planning for eXtension” (M = 3.70, SD =
1.05) had the lowest mean.
61
Table 24 Respondents’ Perceptions of Planning Issues as a Potential Barrier to eXtension by Individual Response Item Planning Issues Items N M SD Lack of planned opportunities for agents to learn about eXtension.
124 4.10 1.08
Lack of shared vision for the role of eXtension with traditional Extension structure.
125 3.88 1.09
Lack of identified need (perceived or real) for eXtension. 125 3.76 1.03 Lack of coordination between participating eXtension partners.
125 3.73 1.07
Lack of strategic planning for eXtension. 125 3.70 1.05 Note. Overall M = 3.84, SD = .93. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Technology Concerns
Responses for the nine items addressing potential technology concerns ranged
from “strongly disagree” to “strongly agree” on a six-point scale (1 = Strongly Disagree,
6 = Strongly Agree). Table 25 displays the means and standard deviations for each item.
Respondents tended to somewhat agree “Concern about loss of face-to-face contact with
clientele” (M = 4.31, SD = 1.41) was a potential barrier to the diffusion of eXtension.
They tended to somewhat disagree “Lack of agent access to computers” (M = 3.07, SD =
1.36) was a potential barrier.
62
Table 25 Respondents’ Perceptions of Technology Concerns as a Potential Barrier to eXtension by Individual Response Item Technology Concerns Items N M SD Concern about loss of face-to-face contact with clientele. 124 4.31 1.41 Lack of technical support. 125 4.06 1.38 Lack of training programs to learn how to use eXtension. 124 4.06 1.25 Concern about loss of control of Extension information at the local level.
125 3.57 1.38
Concern for legal issues (e.g., computer crime, hackers, software piracy, copyright).
125 3.53 1.30
Lack of agent access to adequate Internet connection speeds. 123 3.46 1.42 Concern about intellectual property rights. 125 3.44 1.10 Concern that eXtension will be used to replace local agent positions.
125 3.40 1.48
Lack of agent access to computers. 125 3.07 1.36 Note. Overall M = 3.66, SD = .97. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
Objective Five
The fifth objective was to determine if differences existed between agents’
perceptions of eXtension based upon selected personal characteristics (primary agent
role, county category, education, age, and gender). Agents’ perceptions of eXtension
were described according to (a) relative advantage, (b) compatibility, (c) observability,
(d) complexity, and (e) trialability.
Primary Agent Role
Responding agents significantly differed in their perceptions of eXtension by
primary agent role (see Table 26). Perceptions of the complexity of eXtension were
significantly different by primary agent role, F (5, 119) = 1.30, p < .05. The effect size
was negligible (η² = .09). Fisher’s test of least significant differences was conducted to
63
determine the source of the difference between groups with regards to the characteristic
of complexity. 4-H (M = 4.63, SD = .60) was significantly different (p < .05) from
Horticulture (M = 3.90, SD = .83). Agriculture (M = 4.31, SD = .88) was significantly
different (p < .05) from Family and Consumer Sciences (M = 4.67, SD = .68). Family
and Consumer Sciences (M = 4.67, SD = .68) was significantly different (p < .01) from
Horticulture (M = 3.90, SD = .83).
There were no other significant differences between perceptions of eXtension by
primary role. Perceptions of the relative advantage of eXtension were not significantly
different by primary agent role, F (5, 119) = 1.46, p > .05. The effect size was negligible
(η² = .06). Perceptions of the compatibility of eXtension were not significantly different
by primary agent role, F (5, 119) = 1.41, p > .05. The effect size was negligible (η² =
.06). Perceptions of the observability of eXtension were not significantly different by
primary agent role, F (5, 119) = .89, p > .05. The effect size was negligible (η² = .04).
Perceptions of the trialability of eXtension were not significantly different by primary
agent role, F (5, 119) = 1.13, p > .05. The effect size was negligible (η² = .05).
64
Table 26 Analysis of Variance for Perceptions of eXtension by Primary Agent Role Construct n M SD F p Relative Advantage
Nutrition Education 4 4.19 1.03 1.46 .20 Family and Consumer Sciences 39 3.94 .76 4-H 26 3.70 .73 Agriculture 45 3.69 .89 Natural Resources 3 3.58 .19 Horticulture 8 3.20 .90
Compatibility Family and Consumer Sciences 39 4.60 .83 1.41 .23 Nutrition Education 4 4.54 .50 4-H 26 4.33 .81 Agriculture 45 4.20 .93 Horticulture 8 4.00 .89 Natural Resources 3 3.90 .49
Observability Natural Resources 3 3.67 .67 .89 .49 Nutrition Education 4 3.42 1.13 4-H 26 2.91 .86 Family and Consumer Sciences 39 2.83 1.01 Agriculture 45 2.79 1.02 Horticulture 8 2.54 1.01
Complexity Nutrition Education 4 4.79 .76 1.30* .05 Family and Consumer Sciences 39 4.67 .68 Natural Resources 3 4.67 .29 4-H 26 4.63 .60 Agriculture 45 4.31 .88 Horticulture 8 3.90 .83
Trialability Natural Resources 3 4.50 .87 1.13 .35 Family and Consumer Sciences 39 4.33 .89 Nutrition Education 4 4.13 .83 4-H 26 4.12 .89 Agriculture 45 3.96 .86 Horticulture 8 3.78 .91
Note. Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. *p <.05.
65
County Category
Responding agents did not significantly differ in their perceptions of eXtension
by county category (see Table 27). Perceptions of the relative advantage of eXtension
were not significantly different by county category, F (6, 107) = .49, p > .05. The effect
size was negligible (η² = .03). Perceptions of the compatibility of eXtension were not
significantly different by county category, F (6, 107) = .58, p > .05. The effect size was
negligible (η² = .03). Perceptions of the observability of eXtension were not significantly
different by county category, F (6, 107) = .40, p > .05. The effect size was negligible (η²
= .02). Perceptions of the complexity of eXtension were not significantly different by
county category, F (6, 107) = .90, p > .05. The effect size was negligible (η² = .05).
Perceptions of the trialability of eXtension were not significantly different by county
category, F (6, 107) = 1.86, p > .05. The effect size was negligible (η² = .09).
66
Table 27 Analysis of Variance for Perceptions of eXtension by County Category Construct n M SD F p Relative Advantage
Category VI 6 4.04 .91 .49 .82 Category I 9 3.86 1.03 Category III 19 3.80 .70 Category IV 39 3.80 .87 Category II 11 3.76 1.08 Category V 19 3.55 .60 Category VII 11 3.53 .88
Compatibility Category VI 6 4.75 .75 .58 .75 Category VII 11 4.44 1.10 Category IV 39 4.44 .91 Category V 19 4.35 .72 Category III 19 4.25 .63 Category I 9 4.13 1.30 Category II 11 4.09 .94
Observability Category VII 11 3.15 .74 .40 .88 Category IV 39 2.90 .96 Category V 19 2.86 .96 Category III 19 2.79 1.09 Category VI 6 2.67 1.21 Category II 11 2.64 1.22 Category I 9 2.59 .94
Complexity Category VII 11 4.70 .78 .90 .50 Category IV 39 4.60 .62 Category VI 6 4.58 .77 Category III 19 4.45 .77 Category II 11 4.38 .94 Category V 19 4.25 .81 Category I 9 4.12 1.12
Trialability Category IV 39 4.36 .62 1.86 .09 Category III 19 4.26 1.08 Category II 11 4.14 .98 Category VII 11 4.11 1.12 Category I 9 4.00 1.05 Category VI 6 4.00 .63 Category V 19 3.55 .98
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
67
Education
It should be noted there were no respondents who reported terminal degrees at
the high school or associate’s level. Due to the extremely low number of respondents in
the doctoral group, it was excluded from the analysis of differences.
As shown in Table 28, no significant differences existed between respondents’
perceptions of eXtension by education. Perceptions of the relative advantage of
eXtension were not significantly different by education, t (122) = .87, p > .05. The effect
size was negligible (d = .18). Perceptions of the compatibility of eXtension were not
significantly different by education, t (122) = .32, p > .05. The effect size was negligible
(d = -.07). Perceptions of the complexity of eXtension were not significantly different by
education, t (122) = .53, p > .05. The effect size was negligible (d = .10). Perceptions of
the trialability of eXtension were not significantly different by education, t (122) = 1.65,
p > .05. The effect size was small (d = .33). Perceptions of the observability of
eXtension were not significantly different by education, t (122) = .79, p > .05. The effect
size was negligible (d = .15).
68
Table 28 Comparison of Respondents’ Perceptions of eXtension by Education Construct by Education n M SD t p Relative Advantage
Bachelor’s Master’s
38 86
3.86 3.72
.70 .86
.87
.38
Compatibility Bachelor’s Master’s
38 86
4.31 4.37
.75 .92
-.32
.75
Complexity Bachelor’s Master’s
38 86
4.54 4.46
.80 .76
.53
.60
Trialability Bachelor’s Master’s
38 86
4.32 4.05
.70 .92
1.65
.10
Observability Bachelor’s Master’s
38 86
2.96 2.81
1.04 .96
.79
.43
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. Age
Responding agents did not significantly differ in their perceptions of eXtension
by age (see Table 29). Perceptions of the relative advantage of eXtension were not
significantly different by age, F (3, 121) = .03, p > .05. The effect size was negligible (η²
= .01). Perceptions of the compatibility of eXtension were not significantly different by
age, F (3, 121) = .32, p > .05. The effect size was negligible (η² = .01). Perceptions of
the observability of eXtension were not significantly different by age, F (3, 121) = .35, p
> .05. The effect size was negligible (η² = .01). Perceptions of the complexity of
eXtension were not significantly different by age, F (3, 121) = .20, p > .05. The effect
size was negligible (η² = .01). Perceptions of the trialability of eXtension were not
69
significantly different by age, F (3, 121) = .10, p > .05. The effect size was negligible (η²
= .01).
Table 29 Analysis of Variance for Perceptions of eXtension by Age Construct n M SD F p Relative Advantage
50+ 35 3.78 .96 .03 1.00 18 – 29 19 3.76 .56 40 – 49 30 3.75 .85 30 – 39 41 3.73 .81
Compatibility 30 – 39 41 4.41 .82 .32 .81 40 – 49 30 4.36 .83 50+ 35 4.35 .98 18 – 29 19 4.18 .83
Observability 30 – 39 41 2.93 .81 .35 .79 50+ 35 2.92 1.12 18 – 29 19 2.75 1.04 40 – 49 30 2.73 1.00
Complexity 50+ 35 4.54 .74 .20 .89 30 – 39 41 4.50 .77 18 – 29 19 4.49 .76 40 – 49 30 4.39 .84
Trialability 18 – 29 19 4.21 .72 .10 .96 40 – 49 30 4.12 .75 50+ 35 4.10 1.10 30 – 39 41 4.08 .85
Note. The 50+ category contains respondents who chose the 50 - 59 range or the 60+ age range. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
70
Gender
As shown in Table 30, a significant difference between female and male
respondents was found for agents’ perceptions of eXtension. Perceptions of the
compatibility of eXtension were significantly different by gender, t (120) = 2.03, p < .05.
The effect size was small (d = .37).
There were no other significant differences between respondents’ perceptions of
eXtension based upon gender. Perceptions of the relative advantage of eXtension were
not significantly different by gender, t (120) = 1.58, p > .05. The effect size was small (d
= .29). Perceptions of the complexity of eXtension were not significantly different by
gender, t (120) = 1.70, p > .05. The effect size was small (d = .31). Perceptions of the
trialability of eXtension were not significantly different by gender, t(120) = 1.50, p >
.05. The effect size was small (d = .27). Perceptions of the observability of eXtension
were not significantly different by gender, t (120) = .37, p > .05. The effect size was
negligible (d = -.06).
71
Table 30 Comparison of Respondents’ Perceptions of eXtension by Gender Construct by Gender n M SD t p Relative Advantage
Female Male
58 64
3.88 3.65
.76 .83
1.58
.12
Compatibility Female Male
58 64
4.51 4.20
.82 .85
2.03*
.04
Complexity Female Male
58 64
4.61 4.38
.68 .80
1.70
.09
Trialability Female Male
58 64
4.25 4.02
.84 .88
1.50
.14
Observability Female Male
58 64
2.82 2.88
.93 1.00
.37
.72
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. *p < .05.
Objective Six
The sixth objective was to determine if significant differences existed between
agents’ perceptions of potential barriers (concerns about time, concerns about incentives,
financial concerns, planning issues, and technology concerns) to the adoption of
eXtension based upon selected personal characteristics (primary agent role, county
category, education, age, and gender).
72
Primary Agent Role
Responding agents did not significantly differ in their perceptions of potential
barriers to eXtension by primary agent role (see Table 31). Perceptions of concerns
about time were not significantly different by primary agent role, F (5, 119) = .26, p >
.05. The effect size was negligible (η² = .01). Perceptions of concerns about incentives
were not significantly different by primary agent role, F (5, 119) = 1.04, p > .05. The
effect size was negligible (η² = .04). Perceptions of financial concerns were not
significantly different by primary agent role, F (5, 119) = 1.33, p > .05. The effect size
was negligible (η² = .05). Perceptions of planning issues were not significantly different
by primary agent role, F (5, 119) = .79, p > .05. The effect size was negligible (η² = .03).
Perceptions of technology concerns were not significantly different by primary agent
role, F (5, 119) = .57, p > .05. The effect size was negligible (η² = .02).
73
Table 31 Analysis of Variance for Perceptions of Potential Barriers by Primary Agent Role Construct n M SD F p Concerns about time
Natural Resources 3 4.40 .69 .26 .93 4-H 26 4.25 .87 Nutrition Education 4 4.20 .37 Horticulture 8 4.18 .57 Family and Consumer Sciences 39 4.07 .94 Agriculture 45 4.05 .92
Concerns about incentives 4-H 26 4.22 1.00 1.04 .40 Nutrition Education 4 4.19 .70 Natural Resources 3 4.14 .29 Family and Consumer Sciences 39 3.88 1.02 Horticulture 8 3.82 .47 Agriculture 45 3.70 1.07
Financial concerns Natural Resources 3 4.20 1.22 1.33 .26 4-H 26 4.13 .92 Horticulture 8 3.98 1.24 Family and Consumer Sciences 39 3.71 1.07 Agriculture 45 3.59 .94 Nutrition Education 4 3.30 .95
Planning issues 4-H 26 4.12 .77 .79 .56 Horticulture 8 3.88 .72 Family and Consumer Sciences 39 3.85 .99 Nutrition Education 4 3.80 .54 Agriculture 45 3.68 1.04 Natural Resources 3 3.53 .50
Technology concerns Horticulture 8 3.88 .54 .57 .73 4-H 26 3.79 .88 Family and Consumer Sciences 39 3.68 1.10 Agriculture 45 3.59 .95 Nutrition Education 4 3.28 .87 Natural Resources 3 3.07 1.41
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
74
County Category
Responding agents did not significantly differ in their perceptions of potential
barriers to eXtension by county category (see Table 32). Perceptions of concerns about
time were not significantly different by county category, F (6, 107) = 1.11, p > .05. The
effect size was negligible (η² = .06). Perceptions of concerns about incentives were not
significantly different by county category, F (6, 107) = 1.48, p > .05. The effect size was
negligible (η² = .08). Perceptions of financial concerns were not significantly different
by county category, F (6, 107) = 1.73, p > .05. The effect size was negligible (η² = .09).
Perceptions of planning issues were not significantly different by county category, F (6,
107) = 1.29, p > .05. The effect size was negligible (η² = .07). Perceptions of technology
concerns were not significantly different by county category, F (6, 107) = 1.53, p > .05.
The effect size was negligible (η² = .08).
75
Table 32 Analysis of Variance for Perceptions of Potential Barriers by County Category Construct n M SD F p Concerns about time
Category VI 6 4.77 .69 1.11 .36 Category IV 39 4.30 .87 Category III 19 4.16 1.17 Category V 19 4.13 .68 Category II 11 4.05 1.04 Category VII 11 3.95 .56 Category I 9 3.76 .75
Concerns about incentives Category VI 6 4.93 .91 1.48 .19 Category II 11 4.06 .92 Category I 9 4.02 .95 Category IV 39 3.95 .85 Category VII 11 3.75 1.06 Category III 19 3.72 1.26 Category V 19 3.67 .99
Financial concerns Category VI 6 4.37 .63 1.73 .12 Category I 9 4.13 1.09 Category II 11 3.98 1.24 Category V 19 3.86 .75 Category IV 39 3.83 1.02 Category III 19 3.43 1.14 Category VII 11 3.15 1.02
Planning issues Category II 11 4.22 1.23 1.30 .27 Category VI 6 4.13 .99 Category III 19 4.01 1.21 Category V 19 3.89 .58 Category I 9 3.78 .50 Category IV 39 3.75 .91 Category VII 11 3.24 1.05
Technology concerns Category VI 6 4.26 .76 1.53 .18 Category I 9 4.23 .52 Category II 11 3.82 1.16 Category V 19 3.77 .73 Category IV 39 3.53 .87 Category III 19 3.43 1.08 Category VII 11 3.39 1.24
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
76
Education
It should be noted there were no respondents who reported terminal degrees at
the high school or associate’s level. As shown in Table 33, a significant difference
existed between respondents’ perceptions of barriers to eXtension by education.
Perceptions of concerns about incentives were significantly different by education,
t (122) = 2.03, p < .05. The effect size was small (d = -.42).
There were no other significant differences between respondents’ perceptions of
barriers to eXtension by education. Perceptions of concerns about time were not
significantly different by education, t (122) = 1.87, p > .05. The effect size was small (d
= -.38). Perceptions of financial concerns were not significantly different by education,
t (122) = .11, p > .05. The effect size was negligible (d = -.02). Perceptions of planning
issues were not significantly different by education, t (122) = .04, p > .05. The effect size
was negligible (d = .00). Perceptions of technology concerns were not significantly
different by education, t (122) = .50, p > .05. The effect size was negligible (d = -.10).
77
Table 33 Comparison of Respondents’ Perceptions of Potential Barriers by Education Construct by Education n M SD t p Concerns about time
Bachelor’s Master’s
38 86
3.89 4.21
.77 .90
1.87
.06
Concerns about incentives Bachelor’s Master’s
38 86
3.61 4.00
.78 1.04
2.03*
.05
Financial concerns Bachelor’s Master’s
38 86
3.77 3.79
.89 1.06
.11
.92
Planning issues Bachelor’s Master’s
38 86
3.86 3.86
.86 .94
.04
.97
Technology concerns Bachelor’s Master’s
38 86
3.59 3.68
.88 1.01
.50
.62
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree. *p < .05. Age
Responding agents did not significantly differ in their perceptions of potential
barriers to eXtension by age (see Table 34). Perceptions of concerns about time were not
significantly different by age, F (3, 121) = .22, p > .05. The effect size was negligible (η²
= .01). Perceptions of concerns about incentives were not significantly different by age,
F (3, 121) = .48, p > .05. The effect size was negligible (η² = .01). Perceptions of
financial concerns were not significantly different by age, F (3, 121) = 1.22, p > .05. The
effect size was negligible (η² = .03). Perceptions of planning issues were not
significantly different by age, F (3, 121) = .62, p > .05. The effect size was negligible (η²
78
= .02). Perceptions of technology concerns were not significantly different by age, F (3,
121) = .18, p > .05. The effect size was negligible (η² = .01).
Table 34 Analysis of Variance for Perceptions of Potential Barriers by Age Construct n M SD F p Concerns about time
18 – 29 19 4.19 .85 .22 .89 50+ 35 4.16 .88 40 – 49 30 4.14 .96 30 – 39 41 4.03 .83
Concerns about incentives 18 – 29 19 3.97 .91 .48 .70 50+ 35 3.96 1.18 30 – 39 41 3.95 .95 40 – 49 30 3.70 .89
Financial concerns 18 – 29 19 4.06 .94 1.22 .30 50+ 35 3.81 1.13 30 – 39 41 3.79 1.07 40 – 49 30 3.51 .80
Planning issues 18 – 29 19 4.08 .91 .62 .60 30 – 39 41 3.86 .89 40 – 49 30 3.76 .75 50+ 35 3.75 1.13
Technology concerns 50+ 35 3.74 1.22 .18 .91 18 – 29 19 3.69 .89 40 – 49 30 3.63 .83 30 – 39 41 3.59 .88
Note. The 50+ category contains respondents who chose the 50 - 59 range or the 60+ age range. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
79
Gender
As shown in Table 35, no significant differences between female and male
respondents were found for agents’ perceptions of potential barriers to eXtension.
Perceptions of concerns about time were not significantly different by gender, t (120) =
.28, p > .05. The effect size was negligible (d = .05). Perceptions of concerns about
incentives were not significantly different by gender, t (120) = .82, p > .05. The effect
size was negligible (d = .15). Perceptions of financial concerns were not significantly
different by gender, t (120) = .20, p > .05. The effect size was negligible (d = -.04).
Perceptions of planning issues were not significantly different by gender, t (120) = .44, p
> .05. The effect size was negligible (d = .09). Perceptions of technology concerns were
not significantly different by gender, t (120) = .32, p > .05. The effect size was
negligible (d = .05).
Table 35 Comparison of Respondents’ Perceptions of Potential Barriers by Gender Construct n M SD t p Concerns about time
Female Male
58 64
4.13 4.09
.82 .89
.28
.78
Concerns about incentives Female Male
58 64
3.97 3.82
.94
1.03
.82
.42
Financial concerns Female Male
58 64
3.74 3.78
.93
1.05
.20
.85
Planning issues Female Male
58 64
3.87 3.79
.85
1.01
.44
.66
Technology concerns Female Male
58 64
3.67 3.62
1.00 .86
.32
.75
Note. Scale: 1 = Strongly Disagree, 2 = Disagree, 3 = Somewhat Disagree, 4 = Somewhat Agree, 5 = Agree, 6 = Strongly Agree.
80
Objective Seven
The seventh objective was to describe the relationships between perceptions of
eXtension and potential barriers (concerns about time, concerns about incentives,
financial concerns, planning issues, and technology concerns) to the diffusion of
eXtension. Agents’ perceptions of eXtension were described according to (a) relative
advantage, (b) compatibility, (c) observability, (d) complexity, and (e) trialability.
Relative Advantage
The correlations between respondents’ perceptions of relative advantage and the
potential barriers to the diffusion of eXtension are presented in Table 36. A significant,
low negative relationship existed between perceptions of concerns about time and
perceptions of relative advantage, r (125) = -.21, p < .05. A significant, low negative
relationship existed between perceptions of financial concerns and perceptions of
relative advantage, r (125) = -.20, p < .05. No other significant relationships existed.
Table 36 Correlations between Perceptions of Potential Barriers to eXtension and Relative Advantage Relative Advantage Potential Barrier r p Magnitude Concerns about time -.21* .02 Low Concerns about incentives -.10 .29 Low Financial concerns -.20* .03 Low Planning issues -.16 .08 Low Technology concerns -.06 .53 Negligible Note. Magnitude: .01 ≥ r ≥ .09 = Negligible, .10 ≥ r ≥ .29 = Low, .30 ≥ r ≥ .49 = Moderate, .50 ≥ r ≥ .69 = Substantial, r ≥ .70 = Very Strong. *p < .05.
81
Compatibility
The correlations between respondents’ perceptions of compatibility and the
potential barriers to the diffusion of eXtension are presented in Table 37. A significant,
low negative relationship existed between perceptions of financial concerns and
perceptions of compatibility, r (125) = -.20, p < .05. A significant, low negative
relationship existed between perceptions of planning issues and perceptions of
compatibility, r (125) = -.23, p < .05. No other significant relationships existed.
Table 37 Correlations between Perceptions of Potential Barriers to eXtension and Compatibility Compatibility Potential Barrier r p Magnitude Concerns about time -.10 .25 Low Concerns about incentives -.05 .55 Negligible Financial concerns -.20* .02 Low Planning issues -.23* .01 Low Technology concerns -.08 .36 Negligible Note. Magnitude: .01 ≥ r ≥ .09 = Negligible, .10 ≥ r ≥ .29 = Low, .30 ≥ r ≥ .49 = Moderate, .50 ≥ r ≥ .69 = Substantial, r ≥ .70 = Very Strong. *p < .05. Observability
The correlations between respondents’ perceptions of observability and the
potential barriers to the diffusion of eXtension are presented in Table 38. There were no
significant relationships between potential barriers to the diffusion of eXtension and
observability. All associations were low or negligible.
82
Table 38 Correlations between Perceptions of Potential Barriers to eXtension and Observability Observability Potential Barrier r p Magnitude Concerns about time -.01 .90 Negligible Concerns about incentives -.15 .11 Low Financial concerns -.10 .39 Low Planning issues -.03 .75 Negligible Technology concerns -.14 .12 Low Complexity
The correlations between respondents’ perceptions of complexity and the
potential barriers to the diffusion of eXtension are presented in Table 39. A significant,
low negative relationship existed between perceptions of financial concerns and
perceptions of complexity, r (125) = -.25, p < .01. No other significant relationships
were found.
Table 39 Correlations between Perceptions of Potential Barriers to eXtension and Complexity Complexity Potential Barrier r p Magnitude Concerns about time -.16 .08 Low Concerns about incentives .08 .40 Negligible Financial concerns -.25** .01 Low Planning issues -.08 .38 Negligible Technology concerns -.15 .10 Low Note. Magnitude: .01 ≥ r ≥ .09 = Negligible, .10 ≥ r ≥ .29 = Low, .30 ≥ r ≥ .49 = Moderate, .50 ≥ r ≥ .69 = Substantial, r ≥ .70 = Very Strong. **p < .01.
83
Trialability
The correlations between respondents’ perceptions of trialability and the
potential barriers to the diffusion of eXtension are presented in Table 40. A significant,
low negative relationship existed between perceptions of financial concerns and
perceptions of trialability, r (125) = -.21, p < .05. No other significant relationships were
found.
Table 40 Correlations between Perceptions of Potential Barriers to eXtension and Trialability Trialability Potential Barrier r p Magnitude Concerns about time -.15 .09 Low Concerns about incentives -.14 .12 Low Financial concerns -.21* .02 Low Planning issues -.12 .20 Low Technology concerns -.06 .53 Negligible Note. Magnitude: .01 ≥ r ≥ .09 = Negligible, .10 ≥ r ≥ .29 = Low, .30 ≥ r ≥ .49 = Moderate, .50 ≥ r ≥ .69 = Substantial, r ≥ .70 = Very Strong. *p < .05.
Objective Eight
The eighth objective was to determine the appropriateness of including “no
knowledge” as a sixth stage in the innovation-decision process. As seen in Table 41,
there was a significant difference between the expected and observed frequencies of the
respondents’ stage in the innovation-decision process (χ²(5, N = 124) = 154.61, p < .01).
84
Table 41 Expected and Observed Frequencies for Respondents’ Stages in the Innovation-Decision Process Stage Expected
f Observed
f χ² p
No Knowledge 20.7 39 154.61** .00 Knowledge 20.7 64 Persuasion 20.7 4 Decision 20.7 4 Implementation 20.7 10 Confirmation 20.7 3 Note. **p < .01.
Objective Nine
The ninth objective was to determine the predictor variables for stage in the
innovation-decision process, based upon agents’ perceptions of the characteristics of
eXtension, perceptions of the barriers to the diffusion of eXtension, and selected
personal characteristics. The dependent variable, stage in the innovation-decision
process, had six levels so five discriminant functions were tested. A summary of the
significance of the discriminant functions is displayed in Table 42.
The first discriminant function was significant, Wilks’ Lambda (5, 75) = .33, χ² =
110.48, p < .05. The first discriminant function accounted for 39.30% of the variance in
the dependent variable. The second discriminant function was not significant, Wilks’
Lambda (5, 56) = .50, χ² = 69.59, p > .05. The second discriminant function accounted
for 29.70% of the variance in the dependent variable. The third discriminant function
was not significant, Wilks’ Lambda (5, 39) = .69, χ² = 37.29, p > .05. The third
discriminant function accounted for 13.60% of the variance in the dependent variable.
85
The fourth discriminant function was not significant, Wilks’ Lambda (5, 24) = 21.23, χ²
= 24, p > .05. The fourth discriminant function accounted for 9.20% of the variance in
the dependent variable. The fifth discriminant function was not significant, Wilks’
Lambda (5, 11) = .90, χ² = 10.08, p > .05. The fifth discriminant function accounted for
8.30% of the variance in the dependent variable.
Table 42 Statistical Significance of the Discriminant Functions Test of Function(s) Wilks’
Lambda χ² df p
1 through 5 .33* 110.48 75 .01 2 through 5 .50 69.59 56 .11 3 through 5 .69 37.29 39 .55 4 through 5 .81 21.23 24 .63 5 .90 10.08 11 .52 Note. *p < .05. A summary of the standardized discriminant function coefficients and structure
matrix correlation coefficients for discriminant function one is presented in Table 43.
The variables of the most relative importance to the first function were (a) complexity (b
= .77), (b) technology concerns (b = .67), (c) relative advantage (b = -.52), and (d)
gender (b = -.52). The variables most closely correlated with the first function were (a)
complexity (s = .50), (b) gender (s = -.39), (c) trialability (s = .31), (d) education (s
=.30), and (e) technology concerns (s = .26). The discriminant function correctly
classified 55.90% of the original cases.
86
Table 43 Summary Data for Discriminant Function One Function 1 Predictor Variable ba sb Complexity .77 .50* Gender -.52 -.39* Trialability .02 .31* Education .40 .30* Technology concerns .67 .26* Age .05 .21 Role .09 .18 Concerns about time .43 .25 Financial concerns -.34 -.05 Area -.35 .09 Compatibility .11 .31 Observability .37 .20 Concerns about incentives -.07 .28 Relative advantage -.52 .17 Planning issues -.25 .04 Note. a = standardized discriminant function coefficients, b = pooled within-group correlation coefficients. *p < .05.
87
CHAPTER V
CONCLUSIONS, IMPLICATIONS, AND RECOMMENDATIONS
A summary of the study’s purpose, objectives, and methodology is presented in
this chapter. Conclusions, implications, and recommendations derived from the findings
follow the study summary. The chapter concludes with a summary of recommendations
for research and a summary of recommendations for future research.
Summary of the Study
The relevancy of Cooperative Extension in the 21st century has repeatedly been
called into question (Bull, Cote, Warner & McKinnie, 2004; Crosby et al., 2002;
Rasmussen, 1989; Williamson & Smoak, 2005). Extension has been challenged to meet
the needs of consumers who demand twenty-four hour access to information (ECOP,
2005). Extension responded to this challenge by developing eXtension, a nationally-
based online information network.
eXtension was developed to (a) increase the economic efficiency of the current
Extension model by eliminating redundant educational efforts, (b) increase the
profitability of Cooperative Extension, (c) raise consumers’ awareness of Cooperative
Extension, and (d) provide an instantly accessible information resource to increase
customer satisfaction (Accenture, 2003). Agent acceptance of eXtension is imperative
for the program to be successful (Accenture). Organizationally, Cooperative Extension
has traditionally been resistant to change (Washington & Fowler, 2005). A study of the
88
factors affecting agents’ decisions to adopt eXtension is needed to better understand the
program’s potential as an educational delivery strategy for Cooperative Extension.
Summary of Purpose and Objectives
The purpose of this study was to understand the influence of selected factors on
the adoption of eXtension by Texas Cooperative Extension county extension agents.
Rogers’ (2003) theory of the diffusion of innovations provided the framework for the
study. The research objectives were to:
1. Describe selected personal characteristics of Texas Cooperative Extension
agents.
2. Determine agents’ stage in the innovation-decision process, based upon Li’s
(2004) adaptation of Rogers’ (2003) stages in the innovation-decision process.
3. Determine agents’ perceptions of eXtension based upon Rogers’ (2003)
characteristics of an innovation.
4. Determine agents’ perceptions of potential barriers to the adoption of eXtension.
5. Determine if differences exist between agents’ perceptions of eXtension based
upon selected personal characteristics.
6. Determine if differences exist between agents’ perceptions of potential barriers to
the adoption of eXtension based upon selected personal characteristics.
7. Describe relationships between agents’ perceptions of eXtension based upon
Rogers’ (2003) characteristics of an innovation and their perceptions of potential
barriers to the adoption of eXtension.
89
8. Determine the appropriateness of including “no knowledge” as a stage in the
innovation-decision process.
9. Predict stage in the innovation-decision process based upon agents’ perceptions
of the characteristics of eXtension, perceptions of the barriers to the diffusion of
eXtension, and selected personal characteristics.
Summary of Methodology
The target population for the study included county extension agents working for
the Texas Cooperative Extension service in February 2007. Data were collected using an
online, researcher-developed questionnaire. The questionnaire was pilot tested to
determine face validity and test for reliability. Cronbach’s (1951) alpha coefficients were
calculated for each internal scale. The reliability levels for the internal scales ranged
from .814 ≥ α ≤ .911. These levels were considered acceptable according to the standard
set by Gall, Gall, and Borg (2007).
Participants were contacted via e-mail using to the tailored design method
prescribed by Dillman (2000). A pre-notice, notice, and four reminders were sent to the
participants. A unique password and hyperlink to the questionnaire were included in
each contact following the pre-notice. Directions for opting out of the study were
provided in the notice and four reminders. A final response rate of 66.90% (N = 158)
was achieved. The non-response procedure suggested by Lindner, Murphy, and Briers
(2001) was used to compare early and late respondents. The two respondent groups were
statistically similar with regard to the primary variables, except for observability. Due to
90
a statistically significant difference between early and late respondents for observability,
caution should be used when interpreting results related to this variable.
The Statistical Package for the Social Sciences (SPSS), version 14.0, was used to
analyze the data according to the research objectives. There were 125 usable responses.
Objectives one through three were analyzed using descriptive methods. Objectives four
through seven were analyzed using correlational methods. A non-parametric method,
chi-square, was used for objective eight. Objective nine was analyzed using a
multivariate correlational method.
The independent variables for the study were (a) primary agent role, (b) county
category, (c) education, (d) age, and (e) gender. The dependent variables for the study
were (a) stage in the innovation decision process, (b) relative advantage, (c)
compatibility, (d) complexity, (e) trialability, (f) observability, (g) concerns about time,
(h) concerns about incentives, (i) financial concerns, (j) planning issues, and (k)
technology concerns.
Conclusions, Implications, and Recommendations
Objective One: Conclusions
The first objective was to describe selected personal characteristics of the
respondents. There were five demographic variables measured: (a) primary agent role,
(b) county category, (c) education, (d) age, and (e) gender.
Most of the respondents worked in agriculture or family and consumer sciences,
which together accounted for 56.80% (n = 84) of the responses. The fewest respondents
91
had primary responsibilities in the areas of horticulture (n= 8, 6.40%), nutrition
education (n = 4, 3.20%), and natural resources (n = 3, 2.40%). There were no
respondents in the area of community development.
Each of Texas’ seven county categories was represented by respondents. Most of
the respondents worked in category III (n = 19, 15.20%), category IV (n = 39, 31.20%),
or category V (n = 19, 15.20%) counties. The fewest number of respondents (n = 6,
4.80%) worked in the category VI counties.
The respondents were well-educated. There were no respondents who reported
holding a terminal degree at either the high school or associate’s level. Approximately
30% (n = 38) of respondents had completed a bachelor’s degree, while approximately
70% (n = 87) of respondents held a graduate degree. Very few of the respondents with a
graduate degree had completed a doctoral program.
Respondents tended to be at least thirty years old. Approximately 33% (n = 41)
of respondents were 30 – 39 years old, 24.00% (n = 30) of respondents were 40 – 49
years old, and 28.00% (n = 37) were at least 50 years old. Of the 37 respondents who
were at least 50 years old, very few were over the age of 60.
Respondents were split almost equally by gender. There were 58 (46.40%)
female respondents and 64 (51.20%) male respondents.
92
Objective One: Implications
At the time of this study, the topics available on eXtension were related to
horses, personal finance, and wildlife management (eXtension, n.d.). It follows, then,
that current users of eXtension would likely be associated with agriculture, family and
consumer sciences, and natural resources. This may explain why the majority of
respondents held roles in agriculture or family and consumer science.
Dromgoole and Boleman (2006) found Texas Cooperative Extension county
extension agents perceived horticultural topics to have the highest value for distance
education, while family and consumer science topics had the lowest anticipated value.
Their conclusions indicate horticulture agents may eventually comprise the largest group
of eXtension users and family and consumer science agents the smallest. The low
number of horticulture agents and high number of family and consumer science agents
who chose to participate in this study do not support that hypothesis.
According to a member of the eXtension communication and marketing team,
agents with responsibilities in agriculture and horticulture are anticipated to comprise the
largest percentage of users (T. Meisenbach, personal communication, September 25,
2006). The current lack of 4-H youth development topics available may decrease the
interest in eXtension that was demonstrated by 4-H agents’ willingness to participate in
this study. Similarly, nutrition education agents may be less inclined to adopt eXtension
due to a lack of topics in their interest area.
Rogers (2003) identified the characteristics of socioeconomic status, education,
and age as factors which influence the rate of adoption. The findings from the first
93
objective indicate respondents lived in counties of varying size and wealth. The
respondents’ residency may influence their perceptions of eXtension. According to
Rogers, the more cosmopolite respondents should be more likely to adopt and should
have more positive perceptions of eXtension than the localite respondents. Likewise,
education is positively associated with adoption (Rogers). Age, however, is negatively
associated with adoption (Rogers). Gender may also influence adoption (Emmons,
2003).
Objective One: Recommendations
Future research is recommended to examine the relationships between topics
available on eXtension, decision to register as an eXtension user, and primary agent role;
and the influence of personal characteristics in the adoption process.
Objective Two: Conclusions
The second objective was to describe respondents according to their stage in the
innovation-decision process (no knowledge, knowledge, persuasion, decision,
implementation, and confirmation). Most of the respondents were in the early stages of
the innovation-decision process. Thirty-nine (31.20%) agents reported they had “never
heard of eXtension before reading the description provided in this questionnaire.” The
majority of agents (n = 64, 51.20%) had knowledge of eXtension, but had not decided
their sentiment towards the program. Very few (n = 13, 10.40%) agents were currently
using or had used eXtension.
94
Objective Two: Implications
The findings indicated a widespread lack of knowledge about eXtension. This is
particularly troubling, in light of both national and state efforts to increase awareness.
This study was timed to coincide with the national web conference hosted by the
eXtension administrative team, held February 21, 2007. Pre-notices for the study were
purposively sent on February 22, 2007 to follow the national web conference. The
conference was open to any agent, in any state across the country. The conference
included a demonstration of the eXtension system, a progress report, and group
discussion of eXtension issues (eXtension, n.d.).
Efforts to increase awareness of eXtension at the local level included a
February 1, 2007, e-mail from the Head of Information Technology (IT) for Texas
Cooperative Extension, which explicitly urged agents to register with eXtension (see
Appendix B for original text). This was not the first time such an announcement was
sent. On November 11, 2006, the Head of IT sent a system-wide message to agents in
response to reported concerns about the legitimacy of e-mails being sent from the
marketing director of eXtension (see Appendix C for original text). A description of
eXtension and two hyperlinks to eXtension were provided in that message. In addition,
reference was made to four previous occasions agents were sent information about
eXtension.
Li (2004) described “no knowledge” as “the stage when potential
adopters had no knowledge about the innovation at the very beginning of their adoption
95
behavior” (p. 170). Thirty-nine agents claimed to have no knowledge of eXtension, yet
there were repeated attempts by state and national officials to provide knowledge about
the innovation. It seems improbable that all thirty-nine agents were hired following the
February 2 e-mail, thus causing their relative newness to the system to prevent
familiarity with eXtension. Equally unlikely is the chance that the agents had failed to
learn about eXtension because they lacked access to e-mail; the only way respondents
could access the questionnaire for this study was by using the hyperlink and password
provided to them via e-mail.
One explanation may be the respondents in the “no knowledge” category chose
to ignore attempts to educate them about eXtension. Rogers (2003) described this
phenomenon as selective exposure. Selective exposure is “the tendency to attend to
communication messages that are consistent with the individual’s existing attitudes and
beliefs” (p. 171). Rogers further explained “Individuals consciously or unconsciously
avoid messages that are in conflict with their existing predispositions” (p. 171). It is
possible agents disregarded communication messages about eXtension because they did
not perceive eXtension to be consistent with their attitudes and beliefs about Cooperative
Extension. This may continue to be a problem in the future.
An innovation’s consistency with a potential adopter’s attitudes and beliefs is
important in the knowledge stage (Rogers, 2003). During this time period, individuals
begin to think about the relevancy of the innovation to their situation. Individuals will
not progress beyond the knowledge stage in the innovation-decision process if they
believe the innovation is irrelevant or if they lack “sufficient knowledge” to proceed to
96
the persuasion stage (Rogers, p. 174). The large number (n = 64) of respondents in the
knowledge stage implies the existence of at least one of these two obstacles to
progression.
There was a low number of respondents in the persuasion (n = 4) and decision
(n = 4) stages versus the implementation (n = 10) stage. This indicates potential adopters
moved relatively quickly through the persuasion and decision stages. It may be assumed
the respondents in the implementation stage had formed favorable perceptions of
eXtension in the preceding stages. Those with negative perceptions about eXtension
would have rejected the innovation in the decision stage and would not have reached
implementation (Rogers, 2003). It is unknown whether the respondents in the decision
stage for this study had chosen to adopt but had not yet acted, or whether they chose to
reject eXtension. However, the number of respondents in the implementation stage may
be interpreted as a positive sign, as it exceeded the number of respondents in the
decision stage.
Objective Two: Recommendations
Recommendations for practice, based on Rogers’ (2003) theory of the diffusion
of innovations, are to (a) develop a marketing plan which better communicates how
eXtension addresses agents’ needs, (b) provide more information about how to use
eXtension properly, (c) utilize peer networking to promote eXtension rather than mass
communications, and (d) provide positive reinforcement for agents who have chosen to
97
adopt eXtension. Implementing these recommendations would be expected to aid agents’
progression through the stages in the innovation-decision process.
Research recommendations are to investigate (a) factors related to the potential
occurrence of selective exposure, (b) factors related to the high number of respondents in
the knowledge stage, (c) factors influencing potential adopters’ decisions to reject
eXtension, (d) factors influencing agents’ decision to adopt eXtension, and (e) adopters’
perceptions of eXtension.
Objective Three: Conclusions
The third objective was to describe agents’ perceptions of eXtension based upon
Rogers’ (2003) characteristics of an innovation (relative advantage, compatibility,
observability, complexity, and trialability). Respondents had positive perceptions of
relative advantage, compatibility, complexity and trialability as those characteristics
related to eXtension. They had the most positive perceptions of complexity. They did not
perceive eXtension to have a high degree of observability.
Objective Three: Implications
Rogers (2003) identified subdimensions of relative advantage such as a decrease
in discomfort and a saving of time and effort. Respondents somewhat agreed eXtension
would make their jobs easier. They indicated eXtension might increase the accessibility
of Cooperative Extension programming, which is consistent with one of the goals of the
program (Accenture, 2003).
98
However, eXtension was not perceived to save time and effort for agents. They
somewhat disagreed with the statements “eXtension provides agents with more time to
serve traditional clientele” (M = 3.26, SD = 1.23) and “I envision spending less time
answering routine questions by referring clientele to eXtension” (M = 2.87, SD = 1.28).
eXtension’s failure to save time and effort represents a serious drawback of the system,
as previous research has found agents struggle with the issue of time management
(Harder & Wingenbach; Place, Jacob, Summerhill, & Arrington, 2000). The rate of
adoption may be slowed if agents perceive this to decrease eXtension’s relative
advantage (Rogers, 2003).
Rogers (2003) said innovations which are compatible with the ideas, values,
beliefs, and experiences of potential adopters will have faster rates of adoption. Previous
research identified core values of Cooperative Extension, including honesty and
integrity, credibility with clientele, and high standards for educational programming
(e.g., Safrit, Conklin, & Jones, 2003; Seevers, 1999). Respondents indicated they
perceived eXtension was somewhat compatible with those values. They agreed
eXtension was supportive of Cooperative Extension’s mission. The rate of adoption for
eXtension should be faster due to eXtension’s compatibility with agents’ beliefs and
values.
Complex innovations have lower rates of adoption (Rogers, 2003). eXtension
was not perceived to be complex by agents despite previous research which found agents
needed to strengthen their computer skills (Albright, 2000; Courson, 1999). The items in
this study referred directly to the use of e-mail and the Internet, which may account for
99
the disparity. However, the findings from this study support Gregg and Irani’s (2004)
conclusion that extension agents are increasingly using technology in their daily
activities. eXtension should not be inhibited by agents’ perceptions of its complexity.
Innovations which can be tested on a trial basis have improved rates of adoption
(Rogers, 2003). Respondents had positive perceptions of eXtension’s trialability. This
was unexpected, given the necessity to obtain a username and password in order to
access eXtension materials. The inherent trialability of eXtension is limited by such a
requirement, as it forces the user to make a commitment before experimenting with the
innovation. It is possible that few agents were interested enough to visit the eXtension
Web site and consequently were unaware of the username requirement. That may be
why the respondents’ perceptions of trialability were positive. Or, agents may have had
enough familiarity with their own state-based, online Extension resource to substitute
that experience in lieu of hands-on experience with eXtension. The respondents’ positive
perceptions of eXtension’s trialability should relate positively with its rate of adoption.
The final characteristic, observability, was negatively perceived by respondents.
It should be noted there was a significant difference between early and late respondents,
so the findings related to this characteristic should be limited to the sample population.
In addition, there were only three items measuring the respondents’ perception of
observability but the limited number of items should not have affected the findings. The
a priori test for reliability resulted in a Cronbach’s alpha coefficient of .826 and an ex
post facto test resulted in a Cronbach’s alpha coefficient of .881.
100
Rogers (2003) said observability is positively related to an innovation’s rate of
adoption. The negative perceptions of eXtension’s observability would be expected to
inhibit the rate of adoption. Agents reported (a) it would be somewhat difficult to
identify people involved in eXtension, (b) the official eXtension website was not well-
publicized, and (c) eXtension was not highly visible. These perceptions should be
considered a threat to the diffusion of eXtension.
Objective Three: Recommendations
The following recommendations are intended to increase agent’s perceptions of
relative advantage, trialability, and observability, respectively. They are to: (a) train
agents how to incorporate eXtension into their daily job responsibilities in a way which
will help them save time and effort, (b) provide agents with temporary guest access to
eXtension without requiring registration, and (c) improve the marketing efforts for
eXtension.
Future studies are recommended to (a) determine the primary needs of agents, (b)
determine factors related to agents’ perceptions of eXtension’s trialability, and (c)
determine which methods are most effective for increasing the visibility of eXtension.
Objective Four: Conclusions
The fourth objective was to describe respondents’ perceptions of the potential
barriers (concerns about time, concerns about incentives, financial concerns, planning
issues, and technology concerns) to the adoption of eXtension. Respondents somewhat
101
agreed that each potential barrier was, in fact, a barrier. They had the most concerns
about time. Technology concerns were least perceived as a barrier.
Objective Four: Implications
The identified barriers to eXtension were similar to those found in the literature.
Concerns about incentives, financial concerns, and technology concerns were identified
as recurring barriers in Maguire’s (2005) synthesis of distance education literature.
Respondents somewhat agreed there was a lack of eXtension incentives related to (a)
their performance evaluation, (b) their salary, and (c) county recognition. Respondents
somewhat agreed the cost of purchasing the computer technologies necessary to use
eXtension was a concern. The loss of face-to-face contact with clientele was the most
agreed upon technology concern. Previous research found agricultural education faculty
had a similar concern about the loss of interaction with students in distance education
courses (Murphrey & Dooley, 2002; Nelson & Thompson, 2005).
Agents most agreed a lack of opportunities to learn about eXtension was a barrier
related to planning issues. This finding is consistent with the respondents’ agreement
that there was a lack of time to learn how to incorporate eXtension into their jobs. In
addition, the lack of training programs available for learning how to use eXtension was a
technology concern. Together, these concerns establish a need for eXtension trainings.
Perhaps the most critical of the identified barriers is the concern about time. The
respondents’ concerns about the time necessary to use eXtension were consistent with
the previous research which identified time as a barrier to the diffusion of distance
102
education in higher education (Berg, Muilenberg, Van Haneghan, 2002; Curbelo-Ruiz,
2002; Haber, 2006; Murphy & Terry, 1998; Nelson & Thompson, 2005; Roberts &
Dyer, 2005). Previous research has found agents experienced stress related to demands
on their time (Ensle, 2005; Place, Jacob, Summerhill, & Arrington, 2000). Based on the
findings of this study, it could be reasonably expected that agents continue to feel they
do not have enough time to accomplish the activities which need to be done.
The respondents in this study indicated they neither had the time to learn how to
incorporate eXtension into their daily activities, nor the opportunity to do so. If agents
felt they lacked the time to learn about eXtension, it is questionable whether agents
would have attended training even if the opportunity existed. This is an issue which
needs further attention. Also, the respondents indicated they had a lack of time to meet
the needs of traditional eXtension clientele; agents may see the time required to serve
eXtension clientele as further impairing their ability to work with traditional clientele.
These concerns present a challenge for overcoming this barrier.
Objective Four: Recommendations
The following recommendations are intended to decrease or eliminate agents’
concerns about time and incentives, financial concerns, and planning issues,
respectively. Practical recommendations for decreasing or eliminating barriers to
eXtension are to (a) incorporate lessons on time management into eXtension trainings,
(b) incorporate adoption of eXtension into employee performance evaluations, (c)
103
market eXtension to county commissioners, (d) provide need-based grant support for
computer technologies, and (e) provide opportunities to learn how to use eXtension.
It is recommended that future research determine which delivery strategy (e.g.,
face-to-face, online, handbook) is most preferred by agents for eXtension trainings.
Research should be conducted to determine if relationships exist between training
delivery strategies, learning, and agents’ decisions to adopt eXtension. Related
recommendations for future research include the identification and evaluation of online
tools which may increase agent-to-clientele interaction in the eXtension environment.
The incorporation of such tools into eXtension trainings may help alleviate the agents’
reported concerns about a loss of face-to-face contact with clientele.
Concerns about time are not only linked to the adoption of eXtension, but to the
role of an Extension agent. Future research should examine (a) the factors related to
agents’ concerns about time with regard to eXtension, (b) the factors related to concerns
about a lack of time to serve traditional clientele, and (c) strategies for decreasing time-
related job stress. The first recommendation for research may provide research-based
information which can be used to develop strategies to decrease agents’ perceptions of
time as a barrier to the adoption of eXtension. The second recommendation may provide
a broader understanding of agents’ motivation and/or ability to serve eXtension clientele,
while the third recommendation may provide an understanding of effective strategies for
decreasing time-related job stress.
104
Objective Five: Conclusions
The fifth objective was to determine if differences existed between agents’
perceptions of the characteristics of eXtension (relative advantage, compatibility,
observability, complexity, and trialability) based upon selected personal characteristics
(primary agent role, county category, education, age, and gender). Perceptions of
eXtension did not significantly differ by county category, education, or age.
The respondents did significantly differ in their perceptions of eXtension by
primary agent role. 4-H agents tended to agree that eXtension did not seem complex and
were different from the horticulture agents, who somewhat agreed. Family and consumer
science agents tended to agree eXtension did not seem complex, and were different from
the agriculture and horticulture agents, who somewhat agreed. Perceptions of the
remaining four characteristics (relative advantage, compatibility, observability, and
trialability) were not significantly different by primary agent role.
Respondents significantly differed in their perceptions of eXtension by gender.
Females agreed eXtension was compatibile with their values, beliefs, or experiences,
while males somewhat agreed. Perceptions of the remaining four characteristics (relative
advantage, observability, complexity, and trialability) were not significantly different by
gender.
Objective Five: Implications
The personal characteristics of county category, education, and age were not
related to perceptions of eXtension. According to Rogers (2003), age is not associated
105
with early adoption. This study supports that conclusion. Rogers stated potential
adopters with higher socioeconomic status and higher levels of education are more likely
to be early adopters. This may be interpreted to mean individuals possessing these traits
would have more favorable perceptions of the characteristics of an innovation, based
upon Rogers’ theory that favorable perceptions of an innovation’s characteristics lead to
a faster rate of adoption. Therefore, county category (which is based upon a combination
of population and revenue) and education would have been expected to positively relate
to perceptions of eXtension. This study does not support Rogers’ theory with regard to
socioeconomic status and education.
Primary agent role related to respondents’ perceptions of the complexity of
eXtension. 4-H and family and consumer sciences agents were more likely to agree they
were comfortable using the tools associated with eXtension than agriculture or
horticulture agents. Nutrition education and natural resources agents indicated
perceptions similar to the 4-H and family and consumer sciences agents. The differences
in the perceived complexity of eXtension may be related to the unique demands of each
primary agent role.
Gender was related to respondents’ perceptions of the compatibility of
eXtension. Females were more likely to agree eXtension was compatible with their
values, beliefs, and experiences than males. Unlike Seevers’ (1999) conclusion that there
was no difference in Cooperative Extension values by gender, this finding suggests
males and females may have differing values and beliefs as they pertain to eXtension.
According to Rogers (2003), a person’s experiences also contribute to perceptions of
106
compatibility. It is possible male and female agents have different job experiences due to
their gender (e.g. job roles, how clientele interact with them, family responsibilities),
which may account for the dissimilar perceptions of compatibility.
Objective Five: Recommendations
Primary agent role should be taken into consideration when developing
eXtension trainings for agents, with regard to perceived complexity. Based on the
findings from this study, additional technical assistance should be planned for
horticulture and agriculture agents.
Future research is recommended to understand the influence of primary agent
role on perceptions of complexity. The influence of gender on perceptions of
compatibility should be studied, as well. Future research should determine if
relationships exist between gender, organizational values, and job-related experiences.
Objective Six: Conclusions
The sixth objective was to determine if significant differences existed between
agents’ perceptions of potential barriers (concerns about time, concerns about incentives,
financial concerns, planning issues, and technology concerns) to the adoption of
eXtension based upon selected personal characteristics (primary agent role, county
category, education, age, and gender). There were no significant differences in
perceptions of potential barriers based upon primary agent role, county category, age, or
gender.
107
There was a significant difference in perceptions of concerns about incentives
based upon education. Respondents who had completed a master’s degree were more
likely to somewhat agree a lack of incentives was a barrier to the adoption of eXtension
than respondents with a bachelor’s degree. Education did not affect perceptions of the
other four barriers (concerns about time, financial concerns, planning issues, and
technology concerns).
Objective Six: Implications
The personal characteristics of primary agent role, county category, age, and
gender were not related to agents’ perceptions of barriers to eXtension. The findings are
dissimilar to Schifter’s (2000) identification of age as a significant demographic variable
related to faculty involvement with distance education. The findings are partially
consistent with Li’s (2004) study, which found significant differences in perceptions of
potential barriers by professional area and gender, but not by age or level of education.
Level of education was related to agents’ concerns about incentives. A lack of
adopter incentives decreases an innovation’s perceived relative advantage (Rogers,
2003). Agents with a graduate degree are more likely to be concerned about incentives
than agents with a bachelor’s degree. Earning a graduate degree may result in a greater
sense of entitlement, due to the investments of time and money required to attend
graduate school. If so, those agents may have less favorable perceptions of innovations
which fail to reward their scholastic efforts with incentives.
108
However, Rockwell, Schauer, Fritz and Marx (1999) found salary incentives
were not a significant barrier to the diffusion of distance education. Another potential
explanation was provided by Li’s (2004) study, which concluded faculty with higher
levels of education are less likely to be in the later stages of the innovation-decision
process. This may be indicative of a greater sense of skepticism on the part of highly
educated faculty members. Rather than adopting more quickly, individuals with
advanced degrees may require additional incentives to move beyond the persuasion stage
in the innovation-decision process.
Objective Six: Recommendations
More incentives should be offered to increase the perceived relative advantage of
eXtension. Specifically, the use of eXtension should be incorporated into performance
evaluations at the county and state levels. County commissioners should be educated
about eXtension and encouraged to recognize the agents who use eXtension, as
eXtension is designed to provide an educational service to their constituents. The final
recommendation is to provide a salary incentive to increase perceptions of relative
advantage. Such an incentive may need to be positively related to educational attainment
to appeal to agents with graduate degrees. Increasing agents’ perceptions of relative
advantage will increase the rate of adoption (Rogers, 2003). The anticipated benefits
associated with eXtension may offset the economic investment required for salary
incentives.
109
Future research is recommended to determine why education is related to
differing perceptions of concerns about incentives as a barrier to the adoption of
eXtension. Research is recommended to determine the types of incentives most preferred
by agents. If increased incentives are offered, future research should examine the effect
of those increased incentives on agents’ perceptions of the relative advantage of
eXtension.
Objective Seven: Conclusions
The seventh objective was to describe the relationships between perceptions of
eXtension (relative advantage, compatibility, observability, complexity, and trialability)
and potential barriers (concerns about time, concerns about incentives, financial
concerns, planning issues, and technology concerns) to the diffusion of eXtension. There
were no significant relationships between perceptions of observability and any potential
barrier.
There were significant, low negative relationships between perceptions of
relative advantage and two potential barriers: concerns about time and financial
concerns. There were no other significant relationships between relative advantage and
the three remaining potential barriers (concerns about incentives, planning issues, and
technology concerns).
There were significant, low negative relationships between perceptions of
compatibility and two potential barriers: financial concerns and planning issues. There
were no other significant relationships between compatibility and the three remaining
110
potential barriers (concerns about time, concerns about incentives, and technology
concerns).
There was a significant, low negative relationship between perceptions of
complexity and perceptions of financial concerns. There were no other significant
relationships between complexity and the four remaining barriers (concerns about time,
concerns about incentives, planning issues, and technology concerns).
There was a significant, low negative relationship between perceptions of
trialability and perceptions of financial concerns. There were no other significant
relationships between trialability and the four remaining barriers (concerns about time,
concerns about incentives, planning issues, and technology concerns).
Objective Seven: Implications
Perceptions of observability were not related to perceptions of potential barriers
to eXtension. This is consistent with Li’s (2004) conclusion that perceptions of
observability were not related to how faculty perceived potential barriers to web-based
distance education. Increasing eXtension’s observability would not be expected to
eliminate perceptions of potential barriers.
Perceptions of relative advantage were negatively related to concerns about time
and financial concerns. This is not consistent with the findings of Li (2004), who
concluded the perceived relative advantage of web-based distance education was
negatively related to program credibility and planning issues. Decreasing or eliminating
111
concerns about time and financial concerns would be expected to increase the perceived
relative advantage of eXtension.
Perceptions of compatibility were negatively related to financial concerns and
planning issues. Li (2004) found planning issues were related to the perceived
compatibility of web-based distance education. Decreasing or eliminating financial
concerns and planning issues would be expected to increase the perceived compatibility
of eXtension.
Perceptions of complexity were negatively related to financial concerns. This
conclusion is similar to the findings of Li (2004), who concluded financial concerns,
planning issues and concerns about time (in addition to three barriers not included in this
study) were related to complexity. Decreasing or eliminating financial concerns and
planning issues would be expected to increase the perceived complexity of eXtension.
Perceptions of trialability were negatively related to financial concerns. Li (2004)
did not find a relationship existed between financial concerns and perceptions of
trialability. Decreasing or eliminating financial concerns would be expected to increase
the perceived trialability of eXtension.
Schifter (2002) said the rate of adoption increases when barriers are eliminated.
Financial concerns were related to perceptions of four out of five of the characteristics of
eXtension. Decreasing or eliminating financial concerns would be expected to have the
most significant impact on improving perceptions of eXtension and its rate of adoption.
As mentioned in the preceding paragraphs, the findings for this objective differed
from Li’s (2004) findings in several ways. Rogers’ (2003) description of the diffusion
112
process—an innovation diffuses through a social system over time—provides an
explanation for the differences between the two studies. Although eXtension and web-
based distance education are similar innovations, the social systems associated with
Chinese faculty members and Texas Cooperative Extension county agents are different.
Therefore, some discrepancies in perceptions were expected. It is for this reason that
diffusion research must focus not only on the innovation itself, but the social system
within which the diffusion is expected to occur.
Objective Seven: Recommendations
Recommendations for practice are to decrease or eliminate barriers related to (a)
concerns about time, (b) planning issues, and (c) financial concerns, in order to increase
perceptions of four of the five characteristics of eXtension.
Research is recommended to understand the influence of (a) concerns about time
and financial concerns on perceived relative advantage, (b) financial concerns and
planning issues on perceived compatibility, (c) financial concerns on perceived
complexity, and (d) financial concerns on perceived trialability. Future studies should
examine how the relationships between perceptions of eXtension and the barriers to
eXtension differ according to social system. This study should be replicated in states
other than Texas to better understand the factors related to the diffusion of eXtension
throughout the entire Cooperative Extension system.
113
Objective Eight: Conclusions
The eighth objective was to determine the appropriateness of including “no
knowledge” as a sixth stage in the innovation-decision process. There were significantly
more respondents who selected “no knowledge” than would have been expected by
random chance.
Objective Eight: Implications
Rogers (2003) included only five stages in the innovation-decision process: (a)
knowledge, (b) persuasion, (c) decision, (d) implementation, and (e) confirmation. His
theory failed to include potential adopters who had not learned about the innovation yet.
Li (2004) was the first researcher to include “no knowledge” as a stage. As very few
respondents indicated they had “no knowledge” of web-based distance education in Li’s
study, further evidence was needed to support the inclusion of the sixth stage in the
innovation-decision process. The number of respondents who selected “no knowledge”
in this study exceeded the number anticipated by random chance, implying it is
appropriate to expand Rogers’ model to include the “no knowledge” stage.
Objective Eight: Recommendations
Future diffusion research should include “no knowledge” as a sixth stage in the
innovation-decision process, as originally suggested by Li (2004). This study attempted
to provide a response option which clearly defined what it meant to have no knowledge.
However, there is no way to verify if those respondents who selected “no knowledge”
114
were truly ignorant of eXtension, or if they lacked the confidence necessary to select
“knowledge.” Research is recommended to determine the level of knowledge which
must be obtained for a respondent to cross the threshold between the no knowledge stage
and the knowledge stage. Such research will contribute to the knowledge base of
diffusion research.
Objective Nine: Conclusions
The ninth objective was to determine the predictor variables for stage in the
innovation-decision process, based upon agents’ perceptions of the characteristics of
eXtension, perceptions of the barriers to the diffusion of eXtension, and selected
personal characteristics. The variables that significantly correlated with stage in the
innovation-decision process were (a) complexity, (b) gender, (c) trialability, (d)
education, and (e) technology concerns. The first discriminant function accounted for
39.30% of the variance in the dependent variable and correctly classified 55.90% of the
original cases.
Objective Nine: Implications
There were two characteristics of eXtension (complexity and trialability), one
barrier to eXtension (technology concerns), and two personal characteristics (education
and gender) which were significantly correlated with stage in the innovation-decision
process. It is interesting to note relative advantage and compatibility were not found to
be predictor variables, although Rogers (2003) said they were the most influential
115
characteristics in determining rate of adoption. The literature supports the inclusion of
education as a predictor variable (Rogers, 2003; Li, 2004). Li did not find gender or
technology concerns were correlated with stage in the innovation-decision process.
There was 60.7% of the variance which was not accounted for by the
discriminant function. Nearly half of the original cases could not be correctly identified
by the discriminant function. A need exists for a model which accounts for a higher
percentage of the variance and correctly classifies a greater number of original cases.
Objective Nine: Recommendations
Future research is needed to develop a more accurate model which can be used to
predict stage in the innovation-decision process.
Summary of Recommendations for Practice
Recommendations to increase the adoption and diffusion of eXtension amongst
Texas Cooperative Extension county extension agents are:
1. To encourage agents’ progression through the stages in the innovation-decision
process by developing a marketing plan which highlights how eXtension
addresses agents’ needs,
2. To encourage agents’ progression through the stages in the innovation-decision
process by providing agents with more information about how to use eXtension
properly;
116
3. To encourage agents’ progression through the stages in the innovation-decision
process by utilizing peer networking to promote eXtension rather than mass
communications,
4. To encourage agents’ progression through the stages in the innovation-decision
process by providing positive reinforcement for agents who have chosen to adopt
eXtension,
5. To increase perceptions of relative advantage by training agents how to
incorporate eXtension into their job responsibilities in a way which will help
them save time and effort,
6. To increase perceptions of trialability by providing agents with temporary guest
access to eXtension without requiring registration,
7. To increase perceptions of observability by improving marketing efforts to
increase the visibility of eXtension,
8. To decrease or eliminate concerns about time by incorporating lessons on time
management into eXtension trainings,
9. To decrease or eliminate concerns about incentives by incorporating adoption of
eXtension into employee performance evaluations,
10. To decrease or eliminate concerns about incentives by marketing eXtension to
county commissioners,
11. To decrease or eliminate financial concerns by providing need-based grant
support for computer technologies,
117
12. To decrease or eliminate planning issues by providing agents with opportunities
to learn how to use eXtension,
13. To incorporate lessons on time management into eXtension trainings,
14. To provide additional technical assistance for horticulture and agriculture agents
during eXtension trainings,
15. To offer more incentives to increase the perceived relative advantage of
eXtension,
16. To increase incentives by incorporating the use of eXtension into performance
evaluations at the county and state levels,
17. To increase incentives by educating county commissioners about eXtension,
18. To increase incentives by encouraging county commissioners to recognize the
agents who use eXtension,
19. To increase incentives by providing salary raises for eXtension users,
20. To increase perceptions of four of the five characteristics of eXtension by
decreasing or eliminating the following barriers: (a) concerns about time, (b)
planning issues, and (c) financial concerns.
Summary of Recommendations for Future Research
This study should be replicated within each state, due to the uniqueness of the
social systems within each state Cooperative Extension program. Recommendations for
future research related to the adoption and diffusion of eXtension amongst Texas
Cooperative Extension county extension agents are:
118
1. To examine the relationships between the topics available on eXtension, agents’
decision to register as an eXtension user, and primary agent role,
2. To examine the influence of personal characteristics on the adoption process,
3. To examine factors related to the potential occurrence of selective exposure,
4. To examine factors related to the high number of respondents in the knowledge
stage,
5. To examine the primary needs of agents,
6. To examine the factors influencing potential adopters’ decisions to reject
eXtension,
7. To examine factors influencing agents’ decisions to adopt eXtension,
8. To determine the primary needs of agents,
9. To examine adopters’ perceptions of eXtension,
10. To determine the factors related to agents’ perceptions of eXtension’s trialability,
11. To determine which methods are most effective for increasing the visibility of
eXtension,
12. To determine which delivery strategy is most preferred by agents for eXtension
trainings,
13. To determine if relationships exist between training delivery strategies, learning,
and agents’ decisions to adopt eXtension,
14. To identify and evaluate online tools which may increase agent-to-clientele
interaction in the eXtension environment,
119
15. To examine the factors related to agents’ concerns about time with regard to
eXtension so strategies may be developed to decrease agents’ perceptions of time
as a barrier to the adoption of eXtension,
16. To examine the factors related to concerns about a lack of time to serve
traditional clientele in order to have a broader understanding of agents’
motivation and/or ability to serve eXtension clientele,
17. To examine strategies for decreasing time-related job stress,
18. To understand the influence of primary agent role on perceptions of complexity,
19. To understand the influence of gender on perceptions of compatibility,
20. To determine if relationships exist between gender, organizational values, and
job-related experiences,
21. To understand the influence of education on concerns about incentives,
22. To determine the types of incentives most preferred by agents,
23. To examine the effect of increased incentives on agents’ perceptions of the
relative advantage of eXtension,
24. To understand the influence of concerns about time and financial concerns on
perceived relative advantage,
25. To understand the influence of financial concerns and planning issues on
perceived compatibility,
26. To understand the influence of financial concerns on perceived complexity,
27. To understand the influence of financial concerns on perceived trialability,
120
28. To examine how the relationships between perceptions of eXtension and the
barriers to eXtension differ according to social system,
29. To include “no knowledge” as a sixth stage in the innovation-decision process,
30. To determine the level of knowledge which must be obtained for a respondent to
cross the threshold between the no knowledge stage and the knowledge stage,
and
31. To develop a more accurate model that can be used to predict stage in the
innovation-decision process.
121
REFERENCES
Accenture. (2003, November). e-Extension pre-select business case. Washington, DC:
U.S. Department of Agriculture.
Albright, B. B. (2000). Cooperative Extension and the information technology era: An
assessment of current competencies and future training needs of county extension
agents. Dissertation Abstracts International, 61(7), 2668A. (UMI No. 9980102)
Ather, J., & Greene, E. A. (2005). Promoting biosecurity in the equine community: A
new resource for extension educators and the equine industry. Journal of
Extension, 43(1). Retrieved April 10, 2007, from
http://www.joe.org/joe/2005february/tt4.shtml
Bartlett, J. E., II, Kotrlik, J. W., & Higgins, C. C. (2001). Organizational research:
Determining appropriate sample size in survey research. Information
Technology, Learning, and Performance Journal, 19(1), 43-50.
Bender, D. M., Wood, B. J., & Vredevoogd, J. D. (2004). Teaching time: Distance
education versus classroom instruction. The American Journal of Distance
Education, 18(2), 103-114.
Berge, Z. L. (1998). Barriers to online teaching in post-secondary institutions. Online
Journal of Distance Learning Administration, 1(2). Retrieved April 10, 2007,
from http://www.westga.edu/~distance/Berge12.html
Berge, Z. L., Muilenburg, L. Y., & Van Haneghan, J. (2002). Barriers to distance
education and training. The Quarterly Review of Distance Education, 3(4), 409-
418.
122
Bull, N. H., Cote, L. S., Warner, P. D., & McKinnie, M. R. (2004). Is extension relevant
for the 21st century? Journal of Extension, 42(6). Retrieved April 22, 2006, from
http://www.joe.org/joe/2004december/comm2.shtml
Carroll, N., & Lovejoy, S. (2005). Using technology to survey new audiences. Journal of
Extension, 43(6). Available at: http://www.joe.org/joe/2005december/iw2.shtml
Cavanaugh, J. (2005). Teaching online – A time comparison. Online Journal of Distance
Learning Administration, 8(1). Retrieved June 27, 2006, from
http://www.westga.edu/%7Edistance/ojdla/spring81/cavanaugh81.htm
Cochran, W. G. (1977). Sampling techniques (3rd ed.). New York : John Wiley & Sons.
Cohen, J. (1988). Statistical power analysis for the behavioural sciences (2nd ed.). New
York: Academic Press.
Cohen, J. (1992). Quantitative methods in psychology: A power primer. Psychological
Bulletin, 112(1), 155-159.
Courson, J. L. (1999). An assessment of the computer-related skills needed and
possessed by county extension professionals in the Mississippi State University
Extension service. Dissertation Abstracts International, 60(9), 3239A. (UMI No.
9946324)
Cronbach, L. J. (1951). Coefficient alpha and the internal structure of tests.
Psychometrika,16, 297-334.
Crosby, G, Hamernik, D., Danus, E., Dorsey, M., Hegg, R., Jerkins, D., et al. (2002).
Exploring new opportunities for extension. Retrieved May 24, 2006, from the
123
Cooperative State Research, Education & Extension Service (CSREES) Web
site: http://www.csrees.usda.gov/about/white_papers/pdfs/exploring.pdf
Crossgrove, J., Scheer, S. D., Conklin, N. L., Jones, J. M., & Safrit, R. D. (2005).
Organizational values perceived as evident among Ohio State University
extension personnel. Journal of Extension, 43(5). Retrieved April 15, 2006, from
http://www.joe.org/joe/2005october/rb6.shtml
Curbelo-Ruiz, A. M. (2002). Factors influencing faculty participation in web-based
distance education technologies. Dissertation Abstracts International, 63(4),
1227A. (UMI No. 3049007)
Daugherty, M., & Funke, B. L. (1998). University faculty and student perceptions of
web-based instruction. Journal of Distance Education, 13(1). Retrieved June 2,
2006, from http://cade.athabascau.ca/vol13.1/daugherty.html
Davis, J. A. (1971). Elementary survey analysis. Englewood Cliffs, NJ: Prentice-Hall.
Dillman, D. A. (2000). Mail and internet surveys: The tailored design method (2nd ed.).
New York: John Wiley & Sons.
Dromgoole, D. A., & Boleman, C. T. (2006). Distance education: Perceived barriers and
opportunities related to extension program delivery. Journal of Extension, 44(5).
Retrieved December 4, 2006, from http://www.joe.org/joe/2006october/rb1.shtml
Ensle, K. M. (2005). Burnout: How does extension balance job and family? Journal of
Extension, 43(3). Retrieved March 27, 2007, from
http://www.joe.org/joe/2005june/a5.shtml
124
Emmons, B. A. (2003). Computer anxiety, communication preferences, and personality
type in the North Carolina Cooperative Extension Service. Dissertation Abstracts
International, 64(10), 3564A. (UMI No. 3107760)
eXtension. (n.d.) Retrieved March 22, 2007, from http://www.extension.org/
Extension Committee on Organization and Policy. (2005). Extension Committee on
Organization and Policy Leadership Advisory Council 2005 report. Washington,
DC: National Association of State Universities and Land-Grant Colleges.
Extension Committee on Organization and Policy. (2002). The extension system: A
vision for the 21st Century. Washington, DC: National Association of State
Universities and Land-Grant Colleges.
Gall, M. D., Gall, J. P., & Borg, W. R. (2007). Education research: An introduction (8th
ed.). Boston: Pearson Education.
Gammill, T., & Newman, M. (2005). Factors associated with faculty use of web-based
instruction in higher education. Journal of Agricultural Education, 46(4), 60-71.
Gregg, J. A., & Irani, T. A. (2004). Use of information technology by county extension
agents of the Florida Cooperative Extension Service. Journal of Extension, 42(3).
Retrieved April 10, 2007, from http://www.joe.org/joe/2004june/rb2.shtml
Gupton, K. L. (2004). Factors that affect faculty participation in distance education: An
institutional study. Dissertation Abstracts International, 65(12), 4488A. (UMI
No. 3158437)
125
Gustafson, C., & Crane, L. (2005). Polling your audience with wireless technology.
Journal of Extension, 43(6). Retrieved March 21, 2006, from
http://www.joe.org/joe/2005december/tt3.shtml
Haber, J. R. (2006). Perceptions of barriers concerning effective on-line teaching and
policies: Florida community college full-time faculty members. Dissertation
Abstracts International, 66(7), 2508A. (UMI No. 3183605)
Harder, A., & Wingenbach, G. (2007). Texas 4-H agents’ perceptions of selected
competencies in the 4-H Professional Research, Knowledge, and Competency
model. Proceedings of the 34th Annual National Agricultural Education Research
Conference, xx-xx. Minneapolis, MN.
Hoffman Tepper, K., & Roebuck, J. (2006). Building partnerships for youth: An online
youth development resource center. Journal of Extension, 44(2). Retrieved June
23, 2006, from http://www.joe.org/joe/2006april/tt4.shtml
Jenkins, D. (1993). Survival depends on reaching influential audiences. Journal of
Extension, 31(3). Retrieved April 13, 2006, from
http://www.joe.org/joe/1993fall/tp3.html
Kallioranta, S. M., Vlosky, R. P., & Leavengood, S. (2006). Web-based communities as
a tool for Extension and outreach. Journal of Extension, 44(2). Retrieved
September 6, 2006, from http://www.joe.org/joe/2006april/a4.shtml
Kuck, G. R. (2006). Barriers to implementing distance education: A case study in the
community colleges. Dissertation Abstracts International, 66(11). (UMI No.
3196833)
126
Lavergne, C., & Rutherford, T. (2002, February). Identifying and clarifying Kansas State
University research and Extension’s organizational values. Paper presented to
the Southern Association of Agricultural Scientists. Orlando, FL.
Li, Y. (2004). Faculty perceptions about attributes and barriers impacting diffusion of
web-based distance education (WBDE) at the China Agricultural University.
Dissertation Abstracts International, 65(7), 2460A. (UMI No. 3141422).
Li, Y., & Lindner, J. R. (2006). Faculty adoption behaviour about web-based distance
education: A case study from China Agricultural University [Electronic version].
British Journal of Educational Technology, 0(0), 1-12.
Lindner, J. R., Murphy, T. H., & Briers, G. E. (2001). Handling nonresponse in social
science research. Journal of Agricultural Education, 42(4), 43-53.
Madden, M. (2006). Internet penetration and impact. Pew Internet & American Life
Project Report. Washington, DC: Pew Internet & American Life.
Maguire, L. (2005). Literature review – faculty participation in online distance
education: Barriers and motivators. Online Journal of Distance Learning
Administration, 8(1). Retrieved June 27, 2006 from
http://www.westga.edu/%7Edistance/ojdla/spring81/maguire81.htm
Massey, R., Jaskolski, N. & Sweets, L. (2005). The use of personal response transmitters
in Extension settings. Journal of Extension, 43(6). Retrieved August 4, 2006,
from http://www.joe.org/joe/2005december/tt4.shtml
127
McDowell, G. (2005). Is extension an idea whose time has come – and gone? Journal of
Extension, 42(6). Retrieved April 18, 2006, from
http://www.joe.org/joe/2004december/comm1.shtml
Murphrey, T. P., & Dooley, K. E. (2000). Perceived strengths, weaknesses,
opportunities, and threats impacting the diffusion of distance education
technologies in a college of agriculture and life sciences. Journal of Agricultural
Education, 41(4), 39-50.
Murphy, T. H., & Dooley, K. E. (2001). A five-year longitudinal examination of faculty
needs associated with agricultural distance education. Proceedings of the 28th
Annual National Agricultural Education Research Conference, 144-157. New
Orleans, LA.
Murphy, T. H., & Terry, H. R. (1998). Faculty needs associated with agricultural
distance education. Journal of Agricultural Education, 39(1), 17-27.
Nelson, S. J., & Thompson, G. W. (2005). Barriers perceived by administrators and
faculty regarding the use of distance education technologies in preservice
programs for secondary agricultural education teachers. Journal of Agricultural
Education, 46(4), 36-48.
Owen, M. B. (1999). Factors related to the use of Internet by North Carolina
Cooperative Extension field faculty. Dissertation Abstracts International, 60(6),
1992A. (UMI No. 9933891)
128
Palmer, D. (2006). Raising the visibility of extension web sites. Journal of Extension,
44(1). Retrieved June 20, 2006, from
http://www.joe.org/joe/2006february/tt8.shtml
Payne, J. M. (2004). Views on federal formula funds Smith-Lever 3(b) & (c) and 3(d)
line items: Utah State University Extension March 2004 survey. Retrieved
April 11, 2007, from National Association of State Universities and Land-Grant
Colleges Web site:
http://www.nasulgc.org/CFERR/board_on_agric/ECOP/Executive%20Summary
%20Smith-Lever%20Formula%20Funds%20Survey%202004.pdf
Place, N. T., Jacob, S. G., Summerhill, W. R., & Arrington, L. R. (2000). Balancing
work and family: Professional development needs of extension faculty.
Proceedings of the 27th Annual National Agricultural Education Research
Conference, 180-192. San Diego, CA.
Porter, R. D. (2004). Internet-based distance educators address major education barriers
in large postsecondary institutions. Dissertation Abstracts International, 65(4),
1278A. (UMI No. 3130048)
Rasmussen, W. (1989). Taking the university to the people. Ames, IA: Iowa State
University Press.
Roberts, T. G., & Dyer, J. E. (2005). A summary of distance education in university
agricultural education departments. Journal of Agricultural Education, 46(2), 70-
82.
129
Rockwell, S. K., Schauer, J., Fritz, S. M., and Marx, D. B. (1999). Incentives and
obstacles influencing higher education faculty and administrators to teach via
distance. Online Journal of Distance Learning Administration, 2(3). Retrieved
April 10, 2007, from http://www.westga.edu/~distance/rockwell24.html
Rogers, E. M. (2003). Diffusion of innovations (5th ed.). New York: Free Press.
Rogers, E. M. (1995). Diffusion of innovations (4th ed.). New York: Free Press.
Rogers, E. M. (1963). The adoption process: Part 1. The Journal of Cooperative
Extension, 1(1), 16-22.
Rogers, E. M. (1963). The adoption process: Part 2. The Journal of Cooperative
Extension, 1(2), 69-75.
Safrit, R. D., Conklin, N. L., & Jones, J. M. (2003). A longitudinal study of the evolution
of organizational values of Ohio State University extension educators. Journal of
Extension, 41(5). Retrieved August 21, 2006, from
http://www.joe.org/joe/2003october/rb1.shtml
Schifter, C. C. (2000). Factors influencing faculty participation in distance education: A
factor analysis. Education at a Distance, 13(1). Retrieved December 8, 2006,
from http://www.usdla.org/html/journal/JAN00_Issue/Factors.htm
Seevers, B. (1999). Organizational values of New Mexico Cooperative Extension
Service employees. Proceedings of the 26th Annual National Agricultural
Research Conference, 421-430. Orlando, FL.
Seevers, B. S. (2000). Identifying and clarifying organizational values. Journal of
Agricultural Education, 41(3), 70-79.
130
Seevers, B., Graham, D., Gamon, J., & Conklin, N. (1997). Education through
Cooperative Extension. Albany, NY: Delmar Publishers.
Senyurekli, A. R., Dworkin, J., & Dickinson, J. (2006). On-line professional
development for extension educators. Journal of Extension, 44(3). Retrieved
August 2, 2006, from http://www.joe.org/joe/2006june/rb1.shtml
Simeral, K. D. (2001). Keeping a traditional program-delivery method in an “E” world.
Journal of Extension, 39(1). Retrieved May 21, 2006, from
http://www.joe.org/joe/2001february/comm2.html
Spector, M. J. (2005). Time demands in online instruction. Distance Education, 26(1), 5-
27.
Teig, P. M., & Miller, W. W. (2006). Changing the way things are done: Will distance
education lead higher education into adopting business world practices?
Proceedings of the 33rd Annual National Agricultural Research Conference, 241-
253. Charlotte, NC.
Tennessen, D. J., PonTell, S., Romine, V., & Motheral, S. W. (1997). Opportunities for
Cooperative Extension and local communities in the information age. Journal of
Extension, 35(5). Retrieved April 10, 2007, from
http://www.joe.org/joe/2001august/a3.html
Texas Cooperative Extension. (2006). Agency Strategic Plan 2006-2011. Retrieved
January 23, 2007, from http://agextension.tamu.edu/sp/
United States Department of Agriculture (2003). Annual 4-H youth development
enrollment report: 2003 fiscal year. Retrieved May 25, 2006, from the National
131
4-H Headquarters Web site: http://www.national4-
hheadquarters.gov/library/2003-es237.pdf
Washington, R. R., & Fowler, S. R. (2005). Systematic assessment of resistance to
extension organizational change: Evidence from the Alabama Cooperative
Extension System. Journal of Extension, 43(2). Retrieved May 25, 2006, from
http://www.joe.org/joe/2005april/rb2.shtml
Williamson, R. D. & Smoak, E. P. (2005). Embracing edutainment with interactive e-
learning tools. Journal of Extension, 43(5). Retrieved May 25, 206, from
http://www.joe.org/joe/2005october/iw2.shtml
Weerts, D. J. (2005). Validating institutional commitment to outreach at land-grant
universities: Listening to the voices of community partners. Journal of Extension,
43(5). Retrieved April 24, 2006, from
http://www.joe.org/joe/2005october/a3.shtml
Wiens, B. A., Evans, G. D., Tsao, J. C. I., & Liss, H. J. (2004). Triumph over tragedy,
second edition: A curriculum for extension professionals responding to disasters
and terrorism. Journal of Extension, 42(2). Retrieved April 14, 2007, from
http://www.joe.org/joe/2004april/tt8.shtml
132
APPENDIX A
133
134
135
136
137
138
APPENDIX B
139
>>> Lawrence Lippke 2/1/2007 1:09:28 pm >>> TO: Texas Cooperative Extension Faculty/Staff Here (below) is the latest from eXtension. I also encourage your signing up for an eXtension ID (http://people.extension.org) as mentioned below, and start looking through some of the information currently available from eXtension. Currently, information about horses, financial security, and wildlife damage management is available from eXtension's public website at http://www.extension.org. If you already have an eXtension ID, you can use it when accessing that public website as well, but it is not required. Second, the eXtension FAQ database (http://faq.extension.org) currently has some 27,000 questions and answers in various stages of review and publication. Using your eXtension ID, you may search through those questions and answers for information that may be helpful to your Extension programs. This current database is not sufficiently comprehensive for everything Extension does, but there is certainly a lot of information about the three "public" topics mentioned above, as well as FAQs related to horticulture and fire ants. If you feel you have expertise in any particular area, you can even sign up to be able to review and edit the answers you see there. Finally, you can view information about the active Communities of Practice (http://cop.extension.org), and you are invited to join and contribute to them as well. eXtension, while a long rumored and awaited project, is now up and running, albeit far from complete or comprehensive. \Larry [Texas Cooperative Extension logo] Dr. Lawrence A. Lippke Head, Information Technology Texas Cooperative Extension 103 TAES Annex Building 2468 TAMU College Station, TX 77843-2468 v: 979.845.9689; f: 979.845.0829; e: [email protected] IM: [email protected] >>> On 02/01/07 at 01:13, "Terry Meisenbach" <[email protected]> wrote: WELCOME! This is the eXtension UPDATE for January 2007. The UPDATE is compiled from a number of current articles found in the eXtension blog site http://about.extension.org and other sources. For up-to-date information on eXtension go to http://about.extension.org. ----------------------------------------------------------------------- FREQUENTLY ASKED QUESTIONS SUMMIT SUCCESSFUL eXtension staff and 12 Community of Practice members met in Lexington, KY
140
January 20-22 for an intense, hands-on work session including usability and functionality studies of the internal Frequently Asked Questions (FAQ) system. Pioneer CoP members with FAQ experience worked to further develop and enhance the FAQ system from the internal usage and management perspectives of Communities of Practice. Together, CoP members and eXtension staff were able to prioritize and integrate the needs of both the Communities of Practice and the FAQ system to benefit both entities. FEBRUARY 2007 FILLED WITH PROFESSIONAL DEVELOPMENT OPPORTUNITIES eXtension's professional development opportunities are open to all Cooperative Extension faculty, staff and employees. This month we are offering "30 Minute Sessions" on topics related to the collaborative work tools such as the wiki and FAQ, and also on social network tools like social bookmarking, blogging, and feeds. Give us 30 minutes and we'll teach you something useful! These sessions will be held via Breeze at http://breeze.extension.iastate.edu/learn and your telephone. Plan to join the session 5 minutes before the starting time. In addition, from February 12 to March 23, 2007 we're doing a 6-week professional development series open to anyone in Extension who is interested in working in any of the wikis hosted by eXtension. The goal of this six (6) week seminar series is to allow you to create a piece of content to share in the CoP or Collaborate wiki. In reaching the goal, you will learn about using a wiki, create an article/page in a wiki using the various features available, which may include appropriate use of lists, links, and graphics. Each week of the seminar series will include a short video segment to introduce and explain the topic, and then activities to allow the participant to practice and learn the skills involved for the topic. Each participant is encouraged to attend "Office Hours" weekly to ensure he/she is on track before the next week of the series. Plan to participate? Go to the seminar series page and add yourself to the list before February 7. (Go to the Extension Collaborative Wiki. Click on "Working in MediaWiki - an Article Start to Finish"). Then, the week of February 12, at a time of your convenience, go to the Week 1 link for the Series and jump right in! Questions? Please contact Beth Raney at [email protected]. We're looking forward to working with you! *On Thursday February 8 at 3:30 PM Eastern Time (2:30p CT, 1:30p MT, 12:30p PT, 9:30a HT), "30 Minute Session" Using Collaborate for agents/educators to share your educational materials. photos, PowerPoints, diagrams, and other media. *On Tuesday February 13 at 3:30 PM Eastern Time (2:30p CT, 1:30p MT, 12:30p PT, 9:30a HT), a "30 Minute Session" Social Bookmarking as a collaborative tool -- how to keep your work team on the same page without
141
burying them in email. Participants will be exposed to several social bookmarking tools with an emphasis on del.icio.us (for all Extension). *On Thursday February 15 at 3:30 PM Eastern Time (2:30p CT, 1:30p MT, 12:30p PT, 9:30a HT), a "30 Minute Session" FAQ -- FAQ Orientation for agents/educators to find answers to your clients' questions, also how everyone can contribute to enhancing quality of the FAQ System to make it a more valuable resource.. *On Tuesday February 20 at 3:30 PM Eastern Time (2:30p CT, 1:30p MT, 12:30p PT, 9:30a HT), a "30 Minute Session" Feeding Frenzy - an introduction to Web syndication. Feeds are everywhere today. Even eXtension is syndicating everything. So what are these things? How do they work? And most importantly, how can you use them to save yourself a ton of time. Come to the Feeding Frenzy session to learn how you can start using feeds and change your life forever. Participants will be introduced to Google Reader and its use for managing syndication feeds. (for all Extension) *On Wednesday February 28 at 3:30 PM Eastern Time (2:30p CT, 1:30p MT, 12:30p PT, 9:30a HT), a "30 Minute Session" on the CoP to public eXtension Web site workflow. How does it all work? This session will walk a piece of content from conception through publishing so participants can see how it all works. This session will be less skill-based and will focus on the basics so that CoP members and other can get a feel for the "big picture" of how it all works. HINT: It's not really magic. To participate in any of the 30 Minute sessions. 1. Five minutes before the start time, go to the Breeze meeting room at http://breeze.extension.iastate.edu/learn. 2. You will be presented with a login screen that has an "Enter as Guest" option. Select that option and click your mouse on the "Click to Enter" button. 3. Enter your first name, your last name, and your institution/university, and then click the "Enter" button to join the conference. 4. To hear the audio of the workshop and participate in the Q&A portion of the workshop we will be using a built-in teleconferencing capability of Macromedia's Breeze conferencing software. Once you log into the meeting you will be presented with the option to enter your call-back number, your phone will automatically be called. After entering your number you will be automatically called and joined into the audio portion of the Web conference on your phone. If you or a colleague would like to get notices about upcoming professional development sessions offered by eXtension, go to https://lists.extension.org/mailman/listinfo/learn and subscribe to the
142
"Learn" email list. Add these to your calendar, and plan to join us on for one or more of these sessions in February!! FIRST 2007 NATIONAL eXtension VIDEOCONFERENCE SCHEDULED eXtension will host its first national videoconference for 2007 on Wednesday, February 21. A detailed agenda and directions for accessing the videoconference will follow in an email and posting on the http://about.extension.org blog site. Generally the national videoconferences serve as a quarterly update on the eXtension initiative and offer opportunities for questions and answers and interaction with the eXtension staff. The 2007 schedule for quarterly videoconferences follows. Each videoconference is scheduled on a Wednesday afternoon from 2:30-4:00 p.m. ET. The remaining 2007 dates are: May 16, 2007 August 1, 2007 October 17, 2007 REMINDER: GET YOUR eXtension ID NOW! One of the first steps to being fully engaged with the eXtension initiative is to create an eXtension ID. By doing so you'll be allowed to work in the eXtension collaborative space, you can become a member of one of 20 Communities of Practice, and you'll be registered to receive routine email updates on the initiative. It's a simple process! Just click here (http://people.extension.org) and you'll be taken to the registration page. Encourage your friends and colleagues in Cooperative Extension to do so today! Terry Meisenbach, eXtension Communications & Marketing 26600 Avenida Quintana Cathedral City CA 92234 760-318-0276 office phone 760-318-2942 fax 760-641-9354 cell phone [email protected] _______________________________________________ Institutional-Teams mailing list [email protected] https://lists.extension.org/mailman/listinfo/institutional-teams
143
APPENDIX C
144
145
VITA
Name: Amy Marie Harder Address: 107 Scoates Hall 2116 TAMU College Station, TX 77843-2116 Education: B.S., Equine Science, Colorado State University, 2000 M.Agr., Extension Education, Colorado State University, 2001 Ph.D., Agricultural Education, Texas A&M University, 2007